23 results on '"Akshay S. Chaudhari"'
Search Results
2. Generalizability of Deep Learning Segmentation Algorithms for Automated Assessment of Cartilage Morphology and <scp>MRI</scp> Relaxometry
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Andrew M. Schmidt, Arjun D. Desai, Lauren E. Watkins, Hollis A. Crowder, Marianne S. Black, Valentina Mazzoli, Elka B. Rubin, Quin Lu, James W. MacKay, Robert D. Boutin, Feliks Kogan, Garry E. Gold, Brian A. Hargreaves, and Akshay S. Chaudhari
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Radiology, Nuclear Medicine and imaging - Abstract
Deep learning (DL)-based automatic segmentation models can expedite manual segmentation yet require resource-intensive fine-tuning before deployment on new datasets. The generalizability of DL methods to new datasets without fine-tuning is not well characterized.Evaluate the generalizability of DL-based models by deploying pretrained models on independent datasets varying by MR scanner, acquisition parameters, and subject population.Retrospective based on prospectively acquired data.Overall test dataset: 59 subjects (26 females); Study 1: 5 healthy subjects (zero females), Study 2: 8 healthy subjects (eight females), Study 3: 10 subjects with osteoarthritis (eight females), Study 4: 36 subjects with various knee pathology (10 females).A 3-T, quantitative double-echo steady state (qDESS).Four annotators manually segmented knee cartilage. Each reader segmented one of four qDESS datasets in the test dataset. Two DL models, one trained on qDESS data and another on Osteoarthritis Initiative (OAI)-DESS data, were assessed. Manual and automatic segmentations were compared by quantifying variations in segmentation accuracy, volume, and T2 relaxation times for superficial and deep cartilage.Dice similarity coefficient (DSC) for segmentation accuracy. Lin's concordance correlation coefficient (CCC), Wilcoxon rank-sum tests, root-mean-squared error-coefficient-of-variation to quantify manual vs. automatic T2 and volume variations. Bland-Altman plots for manual vs. automatic T2 agreement. A P value 0.05 was considered statistically significant.DSCs for the qDESS-trained model, 0.79-0.93, were higher than those for the OAI-DESS-trained model, 0.59-0.79. T2 and volume CCCs for the qDESS-trained model, 0.75-0.98 and 0.47-0.95, were higher than respective CCCs for the OAI-DESS-trained model, 0.35-0.90 and 0.13-0.84. Bland-Altman 95% limits of agreement for superficial and deep cartilage T2 were lower for the qDESS-trained model, ±2.4 msec and ±4.0 msec, than the OAI-DESS-trained model, ±4.4 msec and ±5.2 msec.The qDESS-trained model may generalize well to independent qDESS datasets regardless of MR scanner, acquisition parameters, and subject population.1 TECHNICAL EFFICACY: Stage 1.
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- 2022
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3. Imaging of Sarcopenia
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Robert D. Boutin, Denise K. Houston, Akshay S. Chaudhari, Marc H. Willis, Cameron L. Fausett, and Leon Lenchik
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Sarcopenia ,Humans ,Radiology, Nuclear Medicine and imaging ,General Medicine ,Tomography, X-Ray Computed ,Aged - Abstract
Sarcopenia is currently underdiagnosed and undertreated, but this is expected to change because sarcopenia is now recognized with a specific diagnosis code that can be used for billing in some countries, as well as an expanding body of research on prevention, diagnosis, and management. This article focuses on practical issues of increasing interest by highlighting 3 hot topics fundamental to understanding sarcopenia in older adults: definitions and terminology, current diagnostic imaging techniques, and the emerging role of opportunistic computed tomography.
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- 2022
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4. Prospective Deployment of Deep Learning in <scp>MRI</scp> : A Framework for Important Considerations, Challenges, and Recommendations for Best Practices
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Matthew P. Lungren, Elizabeth K. Cole, Brian A. Hargreaves, David B. Larson, Shreyas S. Vasanawala, Akshay S. Chaudhari, Garry E. Gold, Christopher M. Sandino, and Curtis P. Langlotz
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Computer science ,Best practice ,Iterative reconstruction ,Article ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,Deep Learning ,0302 clinical medicine ,Software ,Artificial Intelligence ,Robustness (computer science) ,Image Processing, Computer-Assisted ,Radiology, Nuclear Medicine and imaging ,Use case ,Prospective Studies ,Retrospective Studies ,business.industry ,Deep learning ,Reproducibility of Results ,Evidence-based medicine ,Magnetic Resonance Imaging ,Data science ,Software deployment ,Neural Networks, Computer ,Artificial intelligence ,business ,Algorithms - Abstract
Artificial intelligence algorithms based on principles of deep learning (DL) have made a large impact on the acquisition, reconstruction, and interpretation of MRI data. Despite the large number of retrospective studies using DL, there are fewer applications of DL in the clinic on a routine basis. To address this large translational gap, we review the recent publications to determine three major use cases that DL can have in MRI, namely, that of model-free image synthesis, model-based image reconstruction, and image or pixel-level classification. For each of these three areas, we provide a framework for important considerations that consist of appropriate model training paradigms, evaluation of model robustness, downstream clinical utility, opportunities for future advances, as well recommendations for best current practices. We draw inspiration for this framework from advances in computer vision in natural imaging as well as additional healthcare fields. We further emphasize the need for reproducibility of research studies through the sharing of datasets and software. LEVEL OF EVIDENCE: 5 TECHNICAL EFFICACY STAGE: 2.
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- 2020
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5. Layer-specific analysis of femorotibial cartilage t2 relaxation time based on registration of segmented double echo steady state (dess) to multi-echo-spin-echo (mese) images
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Felix Eckstein, Akshay S. Chaudhari, David Fürst, and Wolfang Wirth
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Cartilage, Articular ,Knee Joint ,Double echo steady state ,Radiography ,Biophysics ,Osteoarthritis ,Time based ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,medicine ,Humans ,Knee ,Radiology, Nuclear Medicine and imaging ,Mathematics ,Radiological and Ultrasound Technology ,medicine.diagnostic_test ,business.industry ,Cartilage ,Magnetic resonance imaging ,Osteoarthritis, Knee ,medicine.disease ,Magnetic Resonance Imaging ,medicine.anatomical_structure ,T2 relaxation ,Spin echo ,Nuclear medicine ,business - Abstract
To develop and validate a 3D registration approach by which double echo steady state (DESS) MR images with cartilage thickness segmentations are used to extract the cartilage transverse relaxation time (T2) from multi-echo-spin-echo (MESE) MR images, without direct segmentations for MESE. Manual DESS segmentations of 89 healthy reference knees (healthy) and 60 knees with early radiographic osteoarthritis (early ROA) from the Osteoarthritis Initiative were registered to corresponding MESE images that had independent direct T2 segmentations. For validation purposes, (a) regression analysis of deep and superficial cartilage T2 was performed and (b) between-group differences between healthy vs. early ROA knees were compared for registered vs. direct MESE analysis. Moderate to high correlations were observed for the deep (r = 0.80) and the superficial T2 (r = 0.81), with statistically significant between-group differences (ROA vs. healthy) of + 1.4 ms (p = 0.002) vs. + 1.3 ms (p
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- 2020
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6. Validation of Deep Learning–based Augmentation for Reduced 18F-FDG Dose for PET/MRI in Children and Young Adults with Lymphoma
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Praveen Gulaka, Qian Zhao, Michael E. Moseley, Anne M. Muehe, Allison Pribnow, Akshay S. Chaudhari, Ashok J. Theruvath, Heike E. Daldrup-Link, Sheri L. Spunt, Ketan Yerneni, Ying Lu, and Florian Siedek
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Treatment response ,medicine.medical_specialty ,Fluorine-18-fluorodeoxyglucose ,Radiological and Ultrasound Technology ,business.industry ,Whole body imaging ,medicine.disease ,Tumor response ,Lymphoma ,Artificial Intelligence ,medicine ,Radiology, Nuclear Medicine and imaging ,Radiology ,Young adult ,business - Abstract
Deep learning may enable a reduction in dose of fluorine 18 fluorodeoxyglucose in integrated PET/MRI scans of children and young adults with lymphoma for treatment response assessment without compr...
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- 2021
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7. Time-saving opportunities in knee osteoarthritis: T2 mapping and structural imaging of the knee using a single 5-min MRI scan
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Brian A. Hargreaves, Max Reijman, Akshay S. Chaudhari, Jos Runhaar, Sita M A Bierma-Zeinstra, Edwin H.G. Oei, Susanne M. Eijgenraam, Frank W J Heijboer, Garry E. Gold, Radiology & Nuclear Medicine, Orthopedics and Sports Medicine, and General Practice
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medicine.medical_specialty ,Radiography ,Population ,Osteoarthritis ,Meniscus (anatomy) ,Q1 ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Medicine ,Radiology, Nuclear Medicine and imaging ,education ,Neuroradiology ,030203 arthritis & rheumatology ,education.field_of_study ,medicine.diagnostic_test ,business.industry ,Cartilage ,Ultrasound ,R735 ,Magnetic resonance imaging ,General Medicine ,musculoskeletal system ,medicine.disease ,R1 ,medicine.anatomical_structure ,Radiology ,business - Abstract
Objectives To assess the discriminative power of a 5-min quantitative double-echo steady-state (qDESS) sequence for simultaneous T2 measurements of cartilage and meniscus, and structural knee osteoarthritis (OA) assessment, in a clinical OA population, using radiographic knee OA as reference standard. Methods Fifty-three subjects were included and divided over three groups based on radiographic and clinical knee OA: 20 subjects with no OA (Kellgren-Lawrence grade (KLG) 0), 18 with mild OA (KLG2), and 15 with moderate OA (KLG3). All patients underwent a 5-min qDESS scan. We measured T2 relaxation times in four cartilage and four meniscus regions of interest (ROIs) and performed structural OA evaluation with the MRI Osteoarthritis Knee Score (MOAKS) using qDESS with multiplanar reformatting. Between-group differences in T2 values and MOAKS were calculated using ANOVA. Correlations of the reference standard (i.e., radiographic knee OA) with T2 and MOAKS were assessed with correlation analyses for ordinal variables. Results In cartilage, mean T2 values were 36.1 ± SD 4.3, 40.6 ± 5.9, and 47.1 ± 4.3 ms for no, mild, and moderate OA, respectively (p 2 values were 15 ± 3.6, 17.5 ± 3.8, and 20.6 ± 4.7 ms for no, mild, and moderate OA, respectively (p 2 and between radiographic OA and MOAKS in all ROIs (p Conclusion Quantitative T2 and structural assessment of cartilage and meniscus, using a single 5-min qDESS scan, can distinguish between different grades of radiographic OA, demonstrating the potential of qDESS as an efficient tool for OA imaging. Key Points • Quantitative T 2 values of cartilage and meniscus as well as structural assessment of the knee with a single 5-min quantitative double-echo steady-state (qDESS) scan can distinguish between different grades of knee osteoarthritis (OA). • Quantitative and structural qDESS-based measurements correlate significantly with the reference standard, radiographic degree of OA, for all cartilage and meniscus regions. • By providing quantitative measurements and diagnostic image quality in one rapid MRI scan, qDESS has great potential for application in large-scale clinical trials in knee OA.
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- 2020
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8. Utility of deep learning super‐resolution in the context of osteoarthritis MRI biomarkers
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Kathryn J. Stevens, Eric K. Gibbons, Brian A. Hargreaves, Jin Hyung Lee, Zhongnan Fang, Amit Chakraborty, Arjun D. Desai, Akshay S. Chaudhari, Jeffrey P. Wood, and Garry E. Gold
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Image quality ,media_common.quotation_subject ,Population ,Context (language use) ,Osteoarthritis ,Article ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,Deep Learning ,0302 clinical medicine ,medicine ,Humans ,Contrast (vision) ,Radiology, Nuclear Medicine and imaging ,Stage (cooking) ,education ,Retrospective Studies ,media_common ,education.field_of_study ,business.industry ,Reproducibility of Results ,medicine.disease ,Magnetic Resonance Imaging ,Confidence interval ,Diagnostic odds ratio ,business ,Nuclear medicine ,Biomarkers - Abstract
BACKGROUND Super-resolution is an emerging method for enhancing MRI resolution; however, its impact on image quality is still unknown. PURPOSE To evaluate MRI super-resolution using quantitative and qualitative metrics of cartilage morphometry, osteophyte detection, and global image blurring. STUDY TYPE Retrospective. POPULATION In all, 176 MRI studies of subjects at varying stages of osteoarthritis. FIELD STRENGTH/SEQUENCE Original-resolution 3D double-echo steady-state (DESS) and DESS with 3× thicker slices retrospectively enhanced using super-resolution and tricubic interpolation (TCI) at 3T. ASSESSMENT A quantitative comparison of femoral cartilage morphometry was performed for the original-resolution DESS, the super-resolution, and the TCI scans in 17 subjects. A reader study by three musculoskeletal radiologists assessed cartilage image quality, overall image sharpness, and osteophytes incidence in all three sets of scans. A referenceless blurring metric evaluated blurring in all three image dimensions for the three sets of scans. STATISTICAL TESTS Mann-Whitney U-tests compared Dice coefficients (DC) of segmentation accuracy for the DESS, super-resolution, and TCI images, along with the image quality readings and blurring metrics. Sensitivity, specificity, and diagnostic odds ratio (DOR) with 95% confidence intervals compared osteophyte detection for the super-resolution and TCI images, with the original-resolution as a reference. RESULTS DC for the original-resolution (90.2 ± 1.7%) and super-resolution (89.6 ± 2.0%) were significantly higher (P
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- 2019
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9. Evaluation of a Flexible 12-Channel Screen-printed Pediatric MRI Coil
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Thomas Grafendorfer, Greig C. Scott, Valentina Taviani, Joseph R. Corea, Fraser Robb, Balthazar Lechêne, Ana Claudia Arias, John M. Pauly, Michael Lustig, John Ross Bonanni, Marcus T. Alley, Shreyas S. Vasanawala, Akshay S. Chaudhari, Kendall O'Brien, and Simone A. Winkler
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Quality Control ,Male ,Channel (digital image) ,Image quality ,Image Processing ,Image processing ,Signal-To-Noise Ratio ,Medical and Health Sciences ,Phantoms ,Imaging phantom ,Imaging ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,Computer-Assisted ,0302 clinical medicine ,Clinical Research ,Image Processing, Computer-Assisted ,Humans ,Medicine ,Radiology, Nuclear Medicine and imaging ,Child ,Preschool ,Pediatric ,Phantoms, Imaging ,business.industry ,Abdominal wall muscle ,Infant, Newborn ,Infant ,Equipment Design ,Newborn ,Magnetic Resonance Imaging ,Nuclear Medicine & Medical Imaging ,Signal-to-noise ratio (imaging) ,Electromagnetic coil ,Child, Preschool ,030220 oncology & carcinogenesis ,Printing ,Biomedical Imaging ,Female ,business ,Nuclear medicine ,Paraspinal Muscle - Abstract
Background Screen-printed MRI coil technology may reduce the need for bulky and heavy housing of coil electronics and may provide a better fit to patient anatomy to improve coil performance. Purpose To assess the performance and caregiver and clinician acceptance of a pediatric-sized screen-printed flexible MRI coil array as compared with conventional coil technology. Materials and Methods A pediatric-sized 12-channel coil array was designed by using a screen-printing process. Element coupling and phantom signal-to-noise ratio (SNR) were assessed. Subjects were scanned by using the pediatric printed array between September and November 2017; results were compared with three age- and sex-matched historical control subjects by using a commercial 32-channel cardiac array at 3 T. Caregiver acceptance was assessed by asking nurses, technologists, anesthesiologists, and subjects or parents to rate their coil preference. Diagnostic quality of the images was evaluated by using a Likert scale (5 = high image quality, 1 = nondiagnostic). Image SNR was evaluated and compared. Results Twenty study participants were evaluated with the screen-printed coil (age range, 2 days to 12 years; 11 male and nine female subjects). Loaded pediatric phantom testing yielded similar noise covariance matrices and only slightly degraded SNR for the printed coil as compared with the commercial coil. The caregiver acceptance survey yielded a mean score of 4.1 ± 0.6 (scale: 1, preferred the commercial coil; 5, preferred the printed coil). Diagnostic quality score was 4.5 ± 0.6. Mean image SNR was 54 ± 49 (paraspinal muscle), 78 ± 51 (abdominal wall muscle), and 59 ± 35 (psoas) for the printed coil, as compared with 64 ± 55, 65 ± 48, and 57 ± 43, respectively, for the commercial coil; these SNR differences were not statistically significant (P = .26). Conclusion A flexible screen-printed pediatric MRI receive coil yields adequate signal-to-noise ratio in phantoms and pediatric study participants, with similar image quality but higher preference by subjects and their caregivers when compared with a conventional MRI coil. © RSNA, 2019 Online supplemental material is available for this article. See also the editorial by Lamb in this issue.
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- 2019
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10. Sarcopenia in rheumatic disorders: what the radiologist and rheumatologist should know
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Sarthak Gupta, Wilfred Manzano, Leon Lenchik, Lawrence Yao, Akshay S. Chaudhari, and Robert D. Boutin
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medicine.medical_specialty ,Sarcopenia ,business.industry ,Disease progression ,musculoskeletal system ,Muscle mass ,medicine.disease ,Patient care ,Rheumatology ,body regions ,Internal medicine ,Orthopedic surgery ,Radiologists ,medicine ,Body Composition ,Humans ,Radiology, Nuclear Medicine and imaging ,In patient ,Rheumatologists ,Intensive care medicine ,business ,Muscle, Skeletal ,human activities ,Bioelectrical impedance analysis - Abstract
Sarcopenia is defined as the loss of muscle mass, strength, and function. Increasing evidence shows that sarcopenia is common in patients with rheumatic disorders. Although sarcopenia can be diagnosed using bioelectrical impedance analysis or DXA, increasingly it is diagnosed using CT, MRI, and ultrasound. In rheumatic patients, CT and MRI allow "opportunistic" measurement of body composition, including surrogate markers of sarcopenia, from studies obtained during routine patient care. Recognition of sarcopenia is important in rheumatic patients because sarcopenia can be associated with disease progression and poor outcomes. This article reviews how opportunistic evaluation of sarcopenia in rheumatic patients can be accomplished and potentially contribute to improved patient care.
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- 2021
11. Accuracy and longitudinal reproducibility of quantitative femorotibial cartilage measures derived from automated U-Net-based segmentation of two different MRI contrasts: data from the osteoarthritis initiative healthy reference cohort
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Christian F. Baumgartner, Jana Kemnitz, David Fuerst, Akshay S. Chaudhari, Felix Eckstein, Ender Konukoglu, and Wolfgang Wirth
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Cartilage, Articular ,Male ,Coefficient of variation ,Biophysics ,Contrast Media ,Convolutional neural network ,Osteoarthritis ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Magnetic resonance imaging ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Segmentation ,Femur ,030203 arthritis & rheumatology ,Reproducibility ,Cartilage ,Automated segmentation ,Knee osteoarthritis ,Tibia ,Radiological and Ultrasound Technology ,business.industry ,Reproducibility of Results ,Middle Aged ,medicine.disease ,Sagittal plane ,medicine.anatomical_structure ,Coronal plane ,Cohort ,Female ,Nuclear medicine ,business ,Research Article - Abstract
Objective To evaluate the agreement, accuracy, and longitudinal reproducibility of quantitative cartilage morphometry from 2D U-Net-based automated segmentations for 3T coronal fast low angle shot (corFLASH) and sagittal double echo at steady-state (sagDESS) MRI. Methods 2D U-Nets were trained using manual, quality-controlled femorotibial cartilage segmentations available for 92 Osteoarthritis Initiative healthy reference cohort participants from both corFLASH and sagDESS (n = 50/21/21 training/validation/test-set). Cartilage morphometry was computed from automated and manual segmentations for knees from the test-set. Agreement and accuracy were evaluated from baseline visits (dice similarity coefficient: DSC, correlation analysis, systematic offset). The longitudinal reproducibility was assessed from year-1 and -2 follow-up visits (root-mean-squared coefficient of variation, RMSCV%). Results Automated segmentations showed high agreement (DSC 0.89-0.92) and high correlations (r >= 0.92) with manual ground truth for both corFLASH and sagDESS and only small systematic offsets (, Magnetic Resonance Materials in Physics, Biology, and Medicine, 34 (3), ISSN:0968-5243, ISSN:1352-8661
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- 2021
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12. Rapid Knee MRI Acquisition and Analysis Techniques for Imaging Osteoarthritis
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Brian A. Hargreaves, Garry E. Gold, Akshay S. Chaudhari, Feliks Kogan, Sharmila Majumdar, and Valentina Pedoia
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Cartilage, Articular ,medicine.medical_specialty ,rapid MRI ,Aging ,Knee Joint ,Computer science ,Large population ,Osteoarthritis ,quantitative MRI ,Medical and Health Sciences ,Article ,Bone and Bones ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Knee mri ,Engineering ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Medical physics ,Knee ,morphological imaging ,Arthritis ,segmentation ,Pain Research ,deep learning ,Evidence-based medicine ,Osteoarthritis, Knee ,medicine.disease ,Magnetic Resonance Imaging ,Review article ,Nuclear Medicine & Medical Imaging ,Cartilage ,Musculoskeletal ,Physical Sciences ,Biomedical Imaging ,Analysis tools ,Chronic Pain ,compositional imaging ,Articular - Abstract
Osteoarthritis (OA) of the knee is a major source of disability that has no known treatment or cure. Morphological and compositional MRI is commonly used for assessing the bone and soft tissues in the knee to enhance the understanding of OA pathophysiology. However, it is challenging to extend these imaging methods and their subsequent analysis techniques to study large population cohorts due to slow and inefficient imaging acquisition and postprocessing tools. This can create a bottleneck in assessing early OA changes and evaluating the responses of novel therapeutics. The purpose of this review article is to highlight recent developments in tools for enhancing the efficiency of knee MRI methods useful to study OA. Advances in efficient MRI data acquisition and reconstruction tools for morphological and compositional imaging, efficient automated image analysis tools, and hardware improvements to further drive efficient imaging are discussed in this review. For each topic, we discuss the current challenges as well as potential future opportunities to alleviate these challenges. LEVEL OF EVIDENCE: 5 TECHNICAL EFFICACY STAGE: 3.
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- 2020
13. Diagnostic Accuracy of Quantitative Multicontrast 5-Minute Knee MRI Using Prospective Artificial Intelligence Image Quality Enhancement
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Garry E. Gold, Kathryn J. Stevens, Murray J. Grissom, Akshay S. Chaudhari, Brian A. Hargreaves, Zhongnan Fang, Bragi Sveinsson, and Jin Hyung Lee
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Adult ,Male ,medicine.medical_specialty ,Adolescent ,Knee Joint ,Image quality ,Contrast Media ,Diagnostic accuracy ,Knee Injuries ,Sensitivity and Specificity ,030218 nuclear medicine & medical imaging ,Time ,03 medical and health sciences ,Young Adult ,0302 clinical medicine ,Knee mri ,Imaging, Three-Dimensional ,Artificial Intelligence ,Image Interpretation, Computer-Assisted ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Medical physics ,Prospective Studies ,Aged ,business.industry ,Deep learning ,Reproducibility of Results ,General Medicine ,Middle Aged ,Image Enhancement ,Magnetic Resonance Imaging ,Evaluation Studies as Topic ,030220 oncology & carcinogenesis ,Female ,Artificial intelligence ,Knee injuries ,business - Abstract
Please see the Editorial Comment by Derik L. Davis discussing this article. BACKGROUND. Potential approaches for abbreviated knee MRI, including prospective acceleration with deep learning, have ac...
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- 2020
14. Clinical evaluation of fully automated thigh muscle and adipose tissue segmentation using a U-Net deep learning architecture in context of osteoarthritic knee pain
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A. Ruhdorfer, Sebastian K. Eder, Felix Eckstein, Wolfgang Wirth, Akshay S. Chaudhari, Christian F. Baumgartner, Jana Kemnitz, and Ender Konukoglu
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Male ,medicine.medical_specialty ,Knee Joint ,Biophysics ,Adipose tissue ,Pain ,Context (language use) ,Osteoarthritis ,030218 nuclear medicine & medical imaging ,Pattern Recognition, Automated ,03 medical and health sciences ,Automation ,0302 clinical medicine ,Muscle ,Magnetic resonance imaging ,Deep learning ,Convolutional neural networks ,Automated segmentation ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Segmentation ,Diagnosis, Computer-Assisted ,Muscle, Skeletal ,Aged ,Pain Measurement ,030203 arthritis & rheumatology ,Radiological and Ultrasound Technology ,medicine.diagnostic_test ,business.industry ,Thigh muscle ,Middle Aged ,Osteoarthritis, Knee ,medicine.disease ,Magnetic Resonance Imaging ,Knee pain ,Adipose Tissue ,Female ,Radiology ,Neural Networks, Computer ,medicine.symptom ,business ,Clinical evaluation ,Research Article - Abstract
Objective Segmentation of thigh muscle and adipose tissue is important for the understanding of musculoskeletal diseases such as osteoarthritis. Therefore, the purpose of this work is (a) to evaluate whether a fully automated approach provides accurate segmentation of muscles and adipose tissue cross-sectional areas (CSA) compared with manual segmentation and (b) to evaluate the validity of this method based on a previous clinical study. Materials and methods The segmentation method is based on U-Net architecture trained on 250 manually segmented thighs from the Osteoarthritis Initiative (OAI). The clinical evaluation is performed on a hold-out test set bilateral thighs of 48 subjects with unilateral knee pain. Results The segmentation time of the method is, Magnetic Resonance Materials in Physics, Biology, and Medicine, 33, ISSN:0968-5243, ISSN:1352-8661
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- 2020
15. Combined 5‐minute double‐echo in steady‐state with separated echoes and 2‐minute proton‐density‐weighted 2D FSE sequence for comprehensive whole‐joint knee MRI assessment
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Kathryn J. Stevens, Jeffrey P. Wood, Bragi Sveinsson, Marcus T. Alley, Akshay S. Chaudhari, Brian A. Hargreaves, Edwin H.G. Oei, Christopher F. Beaulieu, Jarrett Rosenberg, Garry E. Gold, Feliks Kogan, and Radiology & Nuclear Medicine
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Adult ,Male ,Steady state (electronics) ,Knee Joint ,Article ,030218 nuclear medicine & medical imaging ,Scan time ,03 medical and health sciences ,Imaging, Three-Dimensional ,0302 clinical medicine ,Knee mri ,McNemar's test ,Image Interpretation, Computer-Assisted ,Image Processing, Computer-Assisted ,Humans ,Medicine ,Knee ,Radiology, Nuclear Medicine and imaging ,Prospective Studies ,Proton density ,Aged ,business.industry ,Study Type ,Reproducibility of Results ,Middle Aged ,Image Enhancement ,Magnetic Resonance Imaging ,Confidence interval ,Adipose Tissue ,Coronal plane ,Female ,Protons ,Radiology ,business ,Nuclear medicine ,Algorithms - Abstract
BACKGROUND: Clinical knee MRI protocols require upwards of 15 minutes of scan time. PURPOSE/HYPOTHESIS: To compare the imaging appearance of knee abnormalities depicted with a 5-minute 3D double-echo in steady-state (DESS) sequence with separate echo images, with that of a routine clinical knee MRI protocol. A secondary goal was to compare the imaging appearance of knee abnormalities depicted with 5-minute DESS paired with a 2-minute coronal proton-density fat-saturated (PDFS) sequence. STUDY TYPE: Prospective. SUBJECTS: Thirty-six consecutive patients (19 male) referred for a routine knee MRI. FIELD STRENGTH/SEQUENCES: DESS and PDFS at 3T. ASSESSMENT: Five musculoskeletal radiologists evaluated all images for the presence of internal knee derangement using DESS, DESS+PDFS, and the conventional imaging protocol, and their associated diagnostic confidence of the reading. STATISTICAL TESTS: Differences in positive and negative percent agreement (PPA and NPA, respectively) and 95% confidence intervals (CIs) for DESS and DESS+PDFS compared with the conventional protocol were calculated and tested using exact McNemar tests. The percentage of observations where DESS or DESS+PDFS had equivalent confidence ratings to DESS+Conv were tested with exact symmetry tests. Interreader agreement was calculated using Krippendorff’s alpha. RESULTS: DESS had a PPA of 90% (88–92% CI) and NPA of 99% (99–99% CI). DESS+PDFS had increased PPA of 99% (95–99% CI) and NPA of 100% (99–100% CI) compared with DESS (both P < 0.001). DESS had equivalent diagnostic confidence to DESS+Conv in 94% of findings, whereas DESS+PDFS had equivalent diagnostic confidence in 99% of findings (both P < 0.001). All readers had moderate concordance for all three protocols (Krippendorff’s alpha 47–48%). DATA CONCLUSION: Both 1) 5-minute 3D-DESS with separated echoes and 2) 5-minute 3D-DESS paired with a 2-minute coronal PDFS sequence depicted knee abnormalities similarly to a routine clinical knee MRI protocol, which may be a promising technique for abbreviated knee MRI.
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- 2018
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16. Super‐resolution musculoskeletal<scp>MRI</scp>using deep learning
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Akshay S. Chaudhari, Brian A. Hargreaves, Garry E. Gold, Jeffrey P. Wood, Zhongnan Fang, Eric K. Gibbons, Feliks Kogan, Kathryn J. Stevens, and Jin Hyung Lee
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Computer science ,Image quality ,Pilot Projects ,Signal-To-Noise Ratio ,Residual ,Convolutional neural network ,Article ,030218 nuclear medicine & medical imaging ,Upsampling ,03 medical and health sciences ,Deep Learning ,Imaging, Three-Dimensional ,0302 clinical medicine ,Humans ,Knee ,Radiology, Nuclear Medicine and imaging ,Root-mean-square deviation ,Phantoms, Imaging ,business.industry ,Deep learning ,Pattern recognition ,Osteoarthritis, Knee ,Magnetic Resonance Imaging ,Tricubic interpolation ,Artificial intelligence ,business ,Cartilage Diseases ,Algorithms ,030217 neurology & neurosurgery ,Interpolation - Abstract
PURPOSE To develop a super-resolution technique using convolutional neural networks for generating thin-slice knee MR images from thicker input slices, and compare this method with alternative through-plane interpolation methods. METHODS We implemented a 3D convolutional neural network entitled DeepResolve to learn residual-based transformations between high-resolution thin-slice images and lower-resolution thick-slice images at the same center locations. DeepResolve was trained using 124 double echo in steady-state (DESS) data sets with 0.7-mm slice thickness and tested on 17 patients. Ground-truth images were compared with DeepResolve, clinically used tricubic interpolation, and Fourier interpolation methods, along with state-of-the-art single-image sparse-coding super-resolution. Comparisons were performed using structural similarity, peak SNR, and RMS error image quality metrics for a multitude of thin-slice downsampling factors. Two musculoskeletal radiologists ranked the 3 data sets and reviewed the diagnostic quality of the DeepResolve, tricubic interpolation, and ground-truth images for sharpness, contrast, artifacts, SNR, and overall diagnostic quality. Mann-Whitney U tests evaluated differences among the quantitative image metrics, reader scores, and rankings. Cohen's Kappa (κ) evaluated interreader reliability. RESULTS DeepResolve had significantly better structural similarity, peak SNR, and RMS error than tricubic interpolation, Fourier interpolation, and sparse-coding super-resolution for all downsampling factors (p
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- 2018
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17. Synthesizing Quantitative T2 Maps in Right Lateral Knee Femoral Condyles from Multicontrast Anatomic Data with a Conditional Generative Adversarial Network
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Bo Zhu, Garry E. Gold, Neha Koonjoo, Akshay S. Chaudhari, Bragi Sveinsson, Martin Torriani, and Matthew S. Rosen
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Radiological and Ultrasound Technology ,Artificial neural network ,Artificial Intelligence ,Computer science ,business.industry ,T2 mapping ,FEMORAL CONDYLE ,Radiology, Nuclear Medicine and imaging ,Pattern recognition ,Artificial intelligence ,business ,Generative adversarial network ,Original Research - Abstract
PURPOSE: To develop a proof-of-concept convolutional neural network (CNN) to synthesize T2 maps in right lateral femoral condyle articular cartilage from anatomic MR images by using a conditional generative adversarial network (cGAN). MATERIALS AND METHODS: In this retrospective study, anatomic images (from turbo spin-echo and double-echo in steady-state scans) of the right knee of 4621 patients included in the 2004–2006 Osteoarthritis Initiative were used as input to a cGAN-based CNN, and a predicted CNN T2 was generated as output. These patients included men and women of all ethnicities, aged 45–79 years, with or at high risk for knee osteoarthritis incidence or progression who were recruited at four separate centers in the United States. These data were split into 3703 (80%) for training, 462 (10%) for validation, and 456 (10%) for testing. Linear regression analysis was performed between the multiecho spin-echo (MESE) and CNN T2 in the test dataset. A more detailed analysis was performed in 30 randomly selected patients by means of evaluation by two musculoskeletal radiologists and quantification of cartilage subregions. Radiologist assessments were compared by using two-sided t tests. RESULTS: The readers were moderately accurate in distinguishing CNN T2 from MESE T2, with one reader having random-chance categorization. CNN T2 values were correlated to the MESE values in the subregions of 30 patients and in the bulk analysis of all patients, with best-fit line slopes between 0.55 and 0.83. CONCLUSION: With use of a neural network–based cGAN approach, it is feasible to synthesize T2 maps in femoral cartilage from anatomic MRI sequences, giving good agreement with MESE scans. See also commentary by Yi and Fritz in this issue. Keywords: Cartilage Imaging, Knee, Experimental Investigations, Quantification, Vision, Application Domain, Convolutional Neural Network (CNN), Deep Learning Algorithms, Machine Learning Algorithms © RSNA, 2021
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- 2021
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18. Simultaneous bilateral-knee MR imaging
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U.D. Monu, Edwin H.G. Oei, Garry E. Gold, Feliks Kogan, Brian A. Hargreaves, Evan Levine, Akshay S. Chaudhari, and Kevin S. Epperson
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030203 arthritis & rheumatology ,Scanner ,medicine.diagnostic_test ,Image quality ,business.industry ,Magnetic resonance imaging ,Repeatability ,Covariance ,Confidence interval ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,Noise ,0302 clinical medicine ,Electromagnetic coil ,medicine ,Radiology, Nuclear Medicine and imaging ,Nuclear medicine ,business ,Mathematics - Abstract
PURPOSE To demonstrate and evaluate the scan time and quantitative accuracy of simultaneous bilateral-knee imaging compared with single-knee acquisitions. METHODS Hardware modifications and safety testing was performed to enable MR imaging with two 16-channel flexible coil arrays. Noise covariance and sensitivity-encoding g-factor maps for the dual-coil-array configuration were computed to evaluate coil cross-talk and noise amplification. Ten healthy volunteers were imaged on a 3T MRI scanner with both dual-coil-array bilateral-knee and single-coil-array single-knee configurations. Two experienced musculoskeletal radiologists compared the relative image quality between blinded image pairs acquired with each configuration. Differences in T2 relaxation time measurements between dual-coil-array and single-coil-array acquisitions were compared with the standard repeatability of single-coil-array measurements using a Bland-Altman analysis. RESULTS The mean g-factors for the dual-coil-array configuration were low for accelerations up to 6 in the right-left direction, and minimal cross-talk was observed between the two coil arrays. Image quality ratings of various joint tissues showed no difference in 89% (95% confidence interval: 85-93%) of rated image pairs, with only small differences ("slightly better" or "slightly worse") in image quality observed. The T2 relaxation time measurements between the dual-coil-array configuration and the single-coil configuration showed similar limits of agreement and concordance correlation coefficients (limits of agreement: -0.93 to 1.99 ms; CCC: 0.97 (95% confidence interval: 0.96-0.98)), to the repeatability of single-coil-array measurements (limits of agreement: -2.07 to 1.96 ms; CCC: 0.97 (95% confidence interval: 0.95-0.98)). CONCLUSION A bilateral coil-array setup can image both knees simultaneously in similar scan times as conventional unilateral knee scans, with comparable image quality and quantitative accuracy. This has the potential to improve the value of MRI knee evaluations. Magn Reson Med 80:529-537, 2018. © 2017 International Society for Magnetic Resonance in Medicine.
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- 2017
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19. A simple analytic method for estimating T2 in the knee from DESS
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Akshay S. Chaudhari, Bragi Sveinsson, Brian A. Hargreaves, and Garry E. Gold
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Cartilage, Articular ,Male ,Biomedical Engineering ,Biophysics ,Fat suppression ,Residual ,Signal ,Article ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Reference Values ,Simple (abstract algebra) ,Image Processing, Computer-Assisted ,Humans ,Knee ,Radiology, Nuclear Medicine and imaging ,Simulation ,Mathematics ,Phantoms, Imaging ,Reproducibility of Results ,Magnetic Resonance Imaging ,Knee cartilage ,Analytic element method ,Graph (abstract data type) ,Female ,Linear approximation ,Algorithm ,030217 neurology & neurosurgery - Abstract
Purpose To introduce a simple analytical formula for estimating T 2 from a single Double-Echo in Steady-State (DESS) scan. Methods Extended Phase Graph (EPG) modeling was used to develop a straightforward linear approximation of the relationship between the two DESS signals, enabling accurate T 2 estimation from one DESS scan. Simulations were performed to demonstrate cancellation of different echo pathways to validate this simple model. The resulting analytic formula was compared to previous methods for T 2 estimation using DESS and fast spin-echo scans in agar phantoms and knee cartilage in three volunteers and three patients. The DESS approach allows 3D (256 × 256 × 44) T 2 -mapping with fat suppression in scan times of 3–4 min. Results The simulations demonstrated that the model approximates the true signal very well. If the T 1 is within 20% of the assumed T 1 , the T 2 estimation error was shown to be less than 5% for typical scans. The inherent residual error in the model was demonstrated to be small both due to signal decay and opposing signal contributions. The estimated T 2 from the linear relationship agrees well with reference scans, both for the phantoms and in vivo. The method resulted in less underestimation of T 2 than previous single-scan approaches, with processing times 60 times faster than using a numerical fit. Conclusion A simplified relationship between the two DESS signals allows for rapid 3D T 2 quantification with DESS that is accurate, yet also simple. The simplicity of the method allows for immediate T 2 estimation in cartilage during the MRI examination.
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- 2017
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20. The International Workshop on Osteoarthritis Imaging Knee MRI Segmentation Challenge: A Multi-Institute Evaluation and Analysis Framework on a Standardized Dataset
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Ravinder R. Regatte, Christian Igel, Sibaji Gaj, Mingrui Yang, Cem M. Deniz, Vladimir Juras, Brian A. Hargreaves, Arjun D. Desai, Erik B. Dam, Mathias Perslev, Ulas Bagci, Garry E. Gold, Claudia Iriondo, Akshay S. Chaudhari, Sachin Jambawalikar, Aliasghar Mortazi, Francesco Caliva, Valentina Pedoia, and Xiaojuan Li
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030203 arthritis & rheumatology ,medicine.medical_specialty ,Radiological and Ultrasound Technology ,Computer science ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,MEDLINE ,Osteoarthritis ,medicine.disease ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Knee mri ,Artificial Intelligence ,medicine ,Automatic segmentation ,Radiology, Nuclear Medicine and imaging ,Segmentation ,Medical physics ,Clinical efficacy ,Original Research - Abstract
Purpose: To organize a multi-institute knee MRI segmentation challenge for characterizing the semantic and clinical efficacy of automatic segmentation methods relevant for monitoring osteoarthritis progression.Materials and Methods: A dataset partition consisting of three-dimensional knee MRI from 88 retrospective patients at two time points (baseline and 1-year follow-up) with ground truth articular (femoral, tibial, and patellar) cartilage and meniscus segmentations was standardized. Challenge submissions and a majority-vote ensemble were evaluated against ground truth segmentations using Dice score, average symmetric surface distance, volumetric overlap error, and coefficient of variation on a holdout test set. Similarities in automated segmentations were measured using pairwise Dice coefficient correlations. Articular cartilage thickness was computed longitudinally and with scans. Correlation between thickness error and segmentation metrics was measured using the Pearson correlation coefficient. Two empirical upper bounds for ensemble performance were computed using combinations of model outputs that consolidated true positives and true negatives.Results: Six teams (T 1-T 6) submitted entries for the challenge. No differences were observed across any segmentation metrics for any tissues (P = .99) among the four top-performing networks (T 2, T 3, T 4, T 6). Dice coefficient correlations between network pairs were high (> 0.85). Per-scan thickness errors were negligible among networks T 1-T 4 (P = .99), and longitudinal changes showed minimal bias (< 0.03 mm). Low correlations (ρ < 0.41) were observed between segmentation metrics and thickness error. The majority-vote ensemble was comparable to top-performing networks (P = .99). Empirical upper-bound performances were similar for both combinations (P = .99).Conclusion: Diverse networks learned to segment the knee similarly, where high segmentation accuracy did not correlate with cartilage thickness accuracy and voting ensembles did not exceed individual network performance.See also the commentary by Elhalawani and Mak in this issue.Keywords: Cartilage, Knee, MR-Imaging, Segmentation © RSNA, 2020Supplemental material is available for this article.
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- 2021
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21. Imaging and T 2 relaxometry of short‐T 2 connective tissues in the knee using ultrashort echo‐time double‐echo steady‐state (UTEDESS)
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Brian A. Hargreaves, Tao Zhang, Emily J. McWalter, Garry E. Gold, Catherine J. Moran, Akshay S. Chaudhari, Bragi Sveinsson, and Ethan M. I. Johnson
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Relaxometry ,Materials science ,medicine.diagnostic_test ,Double echo steady state ,Magnetic resonance imaging ,Repeatability ,030218 nuclear medicine & medical imaging ,Tendon ,03 medical and health sciences ,0302 clinical medicine ,medicine.anatomical_structure ,medicine ,Ligament ,Radiology, Nuclear Medicine and imaging ,Ultrashort echo time ,Isotropic resolution ,030217 neurology & neurosurgery ,Biomedical engineering - Abstract
Purpose To develop a radial, double-echo steady-state (DESS) sequence with ultra-short echo-time (UTE) capabilities for T2 measurement of short-T2 tissues along with simultaneous rapid, signal-to-noise ratio (SNR)-efficient, and high-isotropic-resolution morphological knee imaging. Methods THe 3D radial UTE readouts were incorporated into DESS, termed UTEDESS. Multiple-echo-time UTEDESS was used for performing T2 relaxometry for short-T2 tendons, ligaments, and menisci; and for Dixon water-fat imaging. In vivo T2 estimate repeatability and SNR efficiency for UTEDESS and Cartesian DESS were compared. The impact of coil combination methods on short-T2 measurements was evaluated by means of simulations. UTEDESS T2 measurements were compared with T2 measurements from Cartesian DESS, multi-echo spin-echo (MESE), and fast spin-echo (FSE). Results UTEDESS produced isotropic resolution images with high SNR efficiency in all short-T2 tissues. Simulations and experiments demonstrated that sum-of-squares coil combinations overestimated short-T2 measurements. UTEDESS measurements of meniscal T2 were comparable to DESS, MESE, and FSE measurements while the tendon and ligament measurements were less biased than those from Cartesian DESS. Average UTEDESS T2 repeatability variation was under 10% in all tissues. Conclusion The T2 measurements of short-T2 tissues and high-resolution morphological imaging provided by UTEDESS makes it promising for studying the whole knee, both in routine clinical examinations and longitudinal studies. Magn Reson Med 78:2136–2148, 2017. © 2017 International Society for Magnetic Resonance in Medicine.
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- 2017
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22. Simultaneous NODDI and GFA parameter map generation from subsampled q-space imaging using deep learning
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Kyler K. Hodgson, Akshay S. Chaudhari, Edward V. R. DiBella, Ganesh Adluru, Lorie Richards, Jennifer J. Majersik, and Eric K. Gibbons
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Male ,Diffusion Spectrum Imaging ,Computer science ,Image quality ,Convolutional neural network ,030218 nuclear medicine & medical imaging ,Brain Ischemia ,Reduction (complexity) ,03 medical and health sciences ,0302 clinical medicine ,Deep Learning ,Imaging, Three-Dimensional ,Fractional anisotropy ,Neurites ,Humans ,Radiology, Nuclear Medicine and imaging ,Aged ,Orientation (computer vision) ,business.industry ,Deep learning ,Brain ,Reproducibility of Results ,Pattern recognition ,Middle Aged ,Prognosis ,Outcome (probability) ,Stroke ,Diffusion Magnetic Resonance Imaging ,Treatment Outcome ,Anisotropy ,Female ,Artificial intelligence ,Neural Networks, Computer ,business ,030217 neurology & neurosurgery ,Algorithms - Abstract
Purpose To develop a robust multidimensional deep-learning based method to simultaneously generate accurate neurite orientation dispersion and density imaging (NODDI) and generalized fractional anisotropy (GFA) parameter maps from undersampled q-space datasets for use in stroke imaging. Methods Traditional diffusion spectrum imaging (DSI) capable of producing accurate NODDI and GFA parameter maps requires hundreds of q-space samples which renders the scan time clinically untenable. A convolutional neural network (CNN) was trained to generated NODDI and GFA parameter maps simultaneously from 10× undersampled q-space data. A total of 48 DSI scans from 15 stroke patients and 14 normal subjects were acquired for training, validating, and testing this method. The proposed network was compared to previously proposed voxel-wise machine learning based approaches for q-space imaging. Network-generated images were used to predict stroke functional outcome measures. Results The proposed network achieves significant performance advantages compared to previously proposed machine learning approaches, showing significant improvements across image quality metrics. Generating these parameter maps using CNNs also comes with the computational benefits of only needing to generate and train a single network instead of multiple networks for each parameter type. Post-stroke outcome prediction metrics do not appreciably change when using images generated from this proposed technique. Over three test participants, the predicted stroke functional outcome scores were within 1-6% of the clinical evaluations. Conclusions Estimates of NODDI and GFA parameters estimated simultaneously with a deep learning network from highly undersampled q-space data were improved compared to other state-of-the-art methods providing a 10-fold reduction scan time compared to conventional methods.
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- 2018
23. 3D Ultrashort TE MRI for Evaluation of Cartilaginous Endplate of Cervical Disk In Vivo: Feasibility and Correlation With Disk Degeneration in T2-Weighted Spin-Echo Sequence
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Garry E. Gold, Jang Gyu Cha, Yeo Ju Kim, Seung Hwan Yoon, Akshay S. Chaudhari, Young Ju Suh, and Yoon Sang Shin
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Adult ,Cartilage, Articular ,Male ,Degeneration (medical) ,Intervertebral Disc Degeneration ,030218 nuclear medicine & medical imaging ,Correlation ,03 medical and health sciences ,0302 clinical medicine ,Nuclear magnetic resonance ,Imaging, Three-Dimensional ,In vivo ,Image Interpretation, Computer-Assisted ,Medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Prospective Studies ,Sequence (medicine) ,Aged ,business.industry ,General Medicine ,Middle Aged ,Magnetic Resonance Imaging ,Subtraction Technique ,Spin echo ,Feasibility Studies ,Female ,business ,T2 weighted ,030217 neurology & neurosurgery - Abstract
The purpose of this study was to evaluate the feasibility of 3D ultrashort TE (UTE) MRI in depicting the cartilaginous endplate (CEP) and its abnormalities and to investigate the association between CEP abnormalities and disk degeneration on T2-weighted spin-echo (SE) MR images in cervical disks in vivo.Eight healthy volunteers and 70 patients were examined using 3-T MRI with the 3D UTE cones trajectory technique (TR/TE, 16.1/0.032, 6.6). In the volunteer study, quantitative and qualitative assessments of CEP depiction were conducted for the 3D UTE and T2-weighted SE imaging. In the patient study, CEP abnormalities were analyzed. Intersequence agreement between the images obtained with the first-echo 3D UTE sequence and the images created by subtracting the second-echo from the first-echo 3D UTE sequence (subtracted 3D UTE) and the intraobserver and interobserver agreements for 3D UTE overall were also tested. The CEP abnormalities on the 3D UTE images correlated with the Miyazaki grading of the T2-weighted SE images.In the volunteer study, the CEP was well visualized on 3D UTE images but not on T2-weighted SE images (p0.001). In the patient study, for evaluation of CEP abnormalities, intersequence agreements were substantial to almost perfect, intraobserver agreements were substantial to almost perfect, and interobserver agreements were moderate to substantial (p0.001). All of the CEP abnormalities correlated with the Miyazaki grade with statistical significance (p0.001).Three-dimensional UTE MRI feasibly depicts the CEP and CEP abnormalities, which may be associated with the severity of disk degeneration on T2-weighted SE MRI.
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- 2018
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