27 results on '"Jan C Peeken"'
Search Results
2. Development of PSMA-PET-guided CT-based radiomic signature to predict biochemical recurrence after salvage radiotherapy
- Author
-
Simon KB Spohn, Nina-Sophie Schmidt-Hegemann, Juri Ruf, Michael Mix, Matthias Benndorf, Fabian Bamberg, Marcus R Makowski, Simon Kirste, Alexander Rühle, Jerome Nouvel, Tanja Sprave, Marco ME Vogel, Polina Galitsnaya, Juergen E Gschwend, Christian Gratzke, Christian Stief, Steffen Loeck, Alex Zwanenburg, Christian Trapp, Denise Bernhardt, Stephan G Nekolla, Minglun Li, Claus Belka, Stephanie E Combs, Matthias Eiber, Lena Unterrainer, Marcus Unterrainer, Peter Bartenstein, Anca L Grosu, Constantinos Zamboglou, and Jan C Peeken
- Subjects
Radiology, Nuclear Medicine and imaging ,General Medicine - Abstract
Purpose To develop a CT-based radiomic signature to predict biochemical recurrence (BCR) in prostate cancer patients after sRT guided by positron-emission tomography targeting prostate-specific membrane antigen (PSMA-PET). Material and methods Consecutive patients, who underwent 68Ga-PSMA11-PET/CT-guided sRT from three high-volume centers in Germany, were included in this retrospective multicenter study. Patients had PET-positive local recurrences and were treated with intensity-modulated sRT. Radiomic features were extracted from volumes of interests on CT guided by focal PSMA-PET uptakes. After preprocessing, clinical, radiomics, and combined clinical-radiomic models were developed combining different feature reduction techniques and Cox proportional hazard models within a nested cross validation approach. Results Among 99 patients, median interval until BCR was the radiomic models outperformed clinical models and combined clinical-radiomic models for prediction of BCR with a C-index of 0.71 compared to 0.53 and 0.63 in the test sets, respectively. In contrast to the other models, the radiomic model achieved significantly improved patient stratification in Kaplan-Meier analysis. The radiomic and clinical-radiomic model achieved a significantly better time-dependent net reclassification improvement index (0.392 and 0.762, respectively) compared to the clinical model. Decision curve analysis demonstrated a clinical net benefit for both models. Mean intensity was the most predictive radiomic feature. Conclusion This is the first study to develop a PSMA-PET-guided CT-based radiomic model to predict BCR after sRT. The radiomic models outperformed clinical models and might contribute to guide personalized treatment decisions.
- Published
- 2023
- Full Text
- View/download PDF
3. Outcome of patients with soft tissue sarcomas of the extremities and trunk treated by (neo)adjuvant intensity modulated radiation therapy with curative intent
- Author
-
Hendrik Dapper, Christian Diehl, Carolin Knebel, Carolin Mogler, Kai Borm, Sophie Dobiasch, Stephanie E. Combs, and Jan C. Peeken
- Subjects
Oncology ,Radiology, Nuclear Medicine and imaging - Abstract
Background Soft tissue sarcomas (STS) are a relatively rare group of malignant tumors. Currently, there is very little published clinical data, especially in the context of curative multimodal therapy with image-guided, conformal, intensity-modulated radiotherapy. Methods Patients who received preoperative or postoperative intensity-modulated radiotherapy for STS of the extremities or trunk with curative intent were included in this single centre retrospective analysis. A Kaplan–Meier analysis was performed to evaluate survival endpoints. Multivariable proportional hazard models were used to investigate the association between survival endpoints and tumour-, patient-, and treatment-specific characteristics. Results 86 patients were included in the analysis. The most common histological subtypes were undifferentiated pleomorphic high-grade sarcoma (UPS) (27) and liposarcoma (22). More than two third of the patients received preoperative radiation therapy (72%). During the follow-up period, 39 patients (45%) suffered from some type of relapse, mainly remote (31%). The two-years overall survival rate was 88%. The median DFS was 48 months and the median DMFS was 51 months. Female gender (HR 0.460 (0.217; 0.973)) and histology of liposarcomas compared to UPS proved to be significantly more favorable in terms of DFS (HR 0.327 (0.126; 0.852)). Conclusion Conformal, intensity-modulated radiotherapy is an effective treatment modality in the preoperative or postoperative management of STS. Especially for the prevention of distant metastases, the establishment of modern systemic therapies or multimodal therapy approaches is necessary.
- Published
- 2023
- Full Text
- View/download PDF
4. Development and external validation of an MRI-based neural network for brain metastasis segmentation in the AURORA multicenter study
- Author
-
Josef A. Buchner, Florian Kofler, Lucas Etzel, Michael Mayinger, Sebastian M. Christ, Thomas B. Brunner, Andrea Wittig, Björn Menze, Claus Zimmer, Bernhard Meyer, Matthias Guckenberger, Nicolaus Andratschke, Rami A. El Shafie, Jürgen Debus, Susanne Rogers, Oliver Riesterer, Katrin Schulze, Horst J. Feldmann, Oliver Blanck, Constantinos Zamboglou, Konstantinos Ferentinos, Robert Wolff, Kerstin A. Eitz, Stephanie E. Combs, Denise Bernhardt, Benedikt Wiestler, and Jan C. Peeken
- Subjects
Oncology ,Radiology, Nuclear Medicine and imaging ,Hematology - Abstract
Stereotactic radiotherapy is a standard treatment option for patients with brain metastases. The planning target volume is based on gross tumor volume (GTV) segmentation. The aim of this work is to develop and validate a neural network for automatic GTV segmentation to accelerate clinical daily routine practice and minimize interobserver variability.We analyzed MRIs (T1-weighted sequence ± contrast-enhancement, T2-weighted sequence, and FLAIR sequence) from 348 patients with at least one brain metastasis from different cancer primaries treated in six centers. To generate reference segmentations, all GTVs and the FLAIR hyperintense edematous regions were segmented manually. A 3D-U-Net was trained on a cohort of 260 patients from two centers to segment the GTV and the surrounding FLAIR hyperintense region. During training varying degrees of data augmentation were applied. Model validation was performed using an independent international multicenter test cohort (n = 88) including four centers.Our proposed U-Net reached a mean overall Dice similarity coefficient (DSC) of 0.92 ± 0.08 and a mean individual metastasis-wise DSC of 0.89 ± 0.11 in the external test cohort for GTV segmentation. Data augmentation improved the segmentation performance significantly. Detection of brain metastases was effective with a mean F1-Score of 0.93 ± 0.16. The model performance was stable independent of the center (p = 0.3). There was no correlation between metastasis volume and DSC (Pearson correlation coefficient 0.07).Reliable automated segmentation of brain metastases with neural networks is possible and may support radiotherapy planning by providing more objective GTV definitions.
- Published
- 2022
5. The maximum standardized uptake value in patients with recurrent or persistent prostate cancer after radical prostatectomy and PSMA-PET-guided salvage radiotherapy-a multicenter retrospective analysis
- Author
-
Simon K. B. Spohn, Andrea Farolfi, Sarah Schandeler, Marco M. E. Vogel, Juri Ruf, Michael Mix, Simon Kirste, Francesco Ceci, Stefano Fanti, Helena Lanzafame, Francesca Serani, Christian Gratzke, August Sigle, Stephanie E. Combs, Denise Bernhardt, Juergen E. Gschwend, Josef A. Buchner, Christian Trapp, Claus Belka, Peter Bartenstein, Lena Unterrainer, Marcus Unterrainer, Matthias Eiber, Stephan G. Nekolla, Kilian Schiller, Anca L. Grosu, Nina-Sophie Schmidt-Hegemann, Constantinos Zamboglou, Jan C. Peeken, Spohn, Simon K B, Farolfi, Andrea, Schandeler, Sarah, Vogel, Marco M E, Ruf, Juri, Mix, Michael, Kirste, Simon, Ceci, Francesco, Fanti, Stefano, Lanzafame, Helena, Serani, Francesca, Gratzke, Christian, Sigle, August, Combs, Stephanie E, Bernhardt, Denise, Gschwend, Juergen E, Buchner, Josef A, Trapp, Christian, Belka, Clau, Bartenstein, Peter, Unterrainer, Lena, Unterrainer, Marcu, Eiber, Matthia, Nekolla, Stephan G, Schiller, Kilian, Grosu, Anca L, Schmidt-Hegemann, Nina-Sophie, Zamboglou, Constantino, and Peeken, Jan C
- Subjects
Male ,Prostatectomy ,Personalization ,Psma-pet ,Risk Stratification ,Suvmax ,Salvage Radiotherapy ,Prostate ,Prostatic Neoplasms ,SUVmax ,Androgen Antagonists ,Gallium Radioisotopes ,General Medicine ,Salvage radiotherapy ,PSMA-PET ,Positron Emission Tomography Computed Tomography ,Positron-Emission Tomography ,Humans ,Radiology, Nuclear Medicine and imaging ,Neoplasm Recurrence, Local ,Tomography, X-Ray Computed ,Risk stratification ,Retrospective Studies - Abstract
Purpose This study aims to evaluate the association of the maximum standardized uptake value (SUVmax) in positron-emission tomography targeting prostate-specific membrane antigen (PSMA-PET) prior to salvage radiotherapy (sRT) on biochemical recurrence free survival (BRFS) in a large multicenter cohort. Methods Patients who underwent 68 Ga-PSMA11-PET prior to sRT were enrolled in four high-volume centers in this retrospective multicenter study. Only patients with PET-positive local recurrence (LR) and/or nodal recurrence (NR) within the pelvis were included. Patients were treated with intensity-modulated-sRT to the prostatic fossa and elective lymphatics in case of nodal disease. Dose escalation was delivered to PET-positive LR and NR. Androgen deprivation therapy was administered at the discretion of the treating physician. LR and NR were manually delineated and SUVmax was extracted for LR and NR. Cox-regression was performed to analyze the impact of clinical parameters and the SUVmax-derived values on BRFS. Results Two hundred thirty-five patients with a median follow-up (FU) of 24 months were included in the final cohort. Two-year and 4-year BRFS for all patients were 68% and 56%. The presence of LR was associated with favorable BRFS (p = 0.016). Presence of NR was associated with unfavorable BRFS (p = 0.007). While there was a trend for SUVmax values ≥ median (p = 0.071), SUVmax values ≥ 75% quartile in LR were significantly associated with unfavorable BRFS (p = 0.022, HR: 2.1, 95%CI 1.1–4.6). SUVmax value in NR was not significantly associated with BRFS. SUVmax in LR stayed significant in multivariate analysis (p = 0.030). Sensitivity analysis with patients for who had a FU of > 12 months (n = 197) confirmed these results. Conclusion The non-invasive biomarker SUVmax can prognosticate outcome in patients undergoing sRT and recurrence confined to the prostatic fossa in PSMA-PET. Its addition might contribute to improve risk stratification of patients with recurrent PCa and to guide personalized treatment decisions in terms of treatment intensification or de-intensification. This article is part of the Topical Collection on Oncology—Genitourinary.
- Published
- 2022
6. A CT-based radiomics model to detect prostate cancer lymph node metastases in PSMA radioguided surgery patients
- Author
-
Tobias Maurer, Jan C. Peeken, Markus Kroenke, Matthias Eiber, Stephanie E. Combs, Mohamed A. Shouman, Isabel Rauscher, and Jürgen E. Gschwend
- Subjects
Male ,medicine.medical_specialty ,Local binary patterns ,Prostate cancer ,Prostate carcinoma ,Radiomics ,Positron Emission Tomography Computed Tomography ,medicine ,PSMA ,Humans ,Radiology, Nuclear Medicine and imaging ,Lymph node ,business.industry ,Prostatic Neoplasms ,Radioguided Surgery ,General Medicine ,Gold standard (test) ,medicine.disease ,Radioguided surgery ,medicine.anatomical_structure ,Surgery, Computer-Assisted ,Lymphatic Metastasis ,Prostate Carcinoma ,Psma ,Ct ,Lymph Node ,Original Article ,Tomography ,Radiology ,Lymph Nodes ,Neoplasm Recurrence, Local ,business ,Recurrent Prostate Carcinoma ,Tomography, X-Ray Computed ,CT - Abstract
Purpose In recurrent prostate carcinoma, determination of the site of recurrence is crucial to guide personalized therapy. In contrast to prostate-specific membrane antigen (PSMA)–positron emission tomography (PET) imaging, computed tomography (CT) has only limited capacity to detect lymph node metastases (LNM). We sought to develop a CT-based radiomic model to predict LNM status using a PSMA radioguided surgery (RGS) cohort with histological confirmation of all suspected lymph nodes (LNs). Methods Eighty patients that received RGS for resection of PSMA PET/CT-positive LNMs were analyzed. Forty-seven patients (87 LNs) that received inhouse imaging were used as training cohort. Thirty-three patients (62 LNs) that received external imaging were used as testing cohort. As gold standard, histological confirmation was available for all LNs. After preprocessing, 156 radiomic features analyzing texture, shape, intensity, and local binary patterns (LBP) were extracted. The least absolute shrinkage and selection operator (radiomic models) and logistic regression (conventional parameters) were used for modeling. Results Texture and shape features were largely correlated to LN volume. A combined radiomic model achieved the best predictive performance with a testing-AUC of 0.95. LBP features showed the highest contribution to model performance. This model significantly outperformed all conventional CT parameters including LN short diameter (AUC 0.84), LN volume (AUC 0.80), and an expert rating (AUC 0.67). In lymph node–specific decision curve analysis, there was a clinical net benefit above LN short diameter. Conclusion The best radiomic model outperformed conventional measures for detection of LNM demonstrating an incremental value of radiomic features.
- Published
- 2020
7. Definition and validation of a radiomics signature for loco-regional tumour control in patients with locally advanced head and neck squamous cell carcinoma
- Author
-
Goda Kalinauskaite, Stephanie E. Combs, Mechthild Krause, Fabian Lohaus, Maja Guberina, Andreas Schreiber, Annett Linge, Panagiotis Balermpas, Michael H. Baumann, Karoline Leger, Inge Tinhofer, Nika Guberina, Steffen Löck, Jan C. Peeken, Alex Zwanenburg, Daniel Zips, Jens Müller-von der Grün, S. Böke, Stefan Leger, Claus Belka, Asier Rabasco Meneghetti, Esther G.C. Troost, Ute Ganswindt, University of Zurich, and Löck, Steffen
- Subjects
medicine.medical_specialty ,Locally advanced ,Medizin ,R895-920 ,Biomarker ,Hnscc ,Loco-regional Control ,Machine Learning ,Radiomics ,Validation ,610 Medicine & health ,HNSCC ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,Medical physics. Medical radiology. Nuclear medicine ,0302 clinical medicine ,regional control ,Machine learning ,medicine ,2741 Radiology, Nuclear Medicine and Imaging ,Radiology, Nuclear Medicine and imaging ,In patient ,ddc:610 ,RC254-282 ,business.industry ,Loco-regional control ,Cancer ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,medicine.disease ,Head and neck squamous-cell carcinoma ,10044 Clinic for Radiation Oncology ,Confidence interval ,HNSCC Radiomics Validation Biomarker Machine learning Loco ,Oncology ,030220 oncology & carcinogenesis ,Cohort ,Biomarker (medicine) ,2730 Oncology ,Radiology ,business - Abstract
Purpose To develop and validate a CT-based radiomics signature for the prognosis of loco-regional tumour control (LRC) in patients with locally advanced head and neck squamous cell carcinoma (HNSCC) treated by primary radiochemotherapy (RCTx) based on retrospective data from 6 partner sites of the German Cancer Consortium - Radiation Oncology Group (DKTK-ROG). Material and methods Pre-treatment CT images of 318 patients with locally advanced HNSCC were collected. Four-hundred forty-six features were extracted from each primary tumour volume and then filtered through stability analysis and clustering. First, a baseline signature was developed from demographic and tumour-associated clinical parameters. This signature was then supplemented by CT imaging features. A final signature was derived using repeated 3-fold cross-validation on the discovery cohort. Performance in external validation was assessed by the concordance index (C-Index). Furthermore, calibration and patient stratification in groups with low and high risk for loco-regional recurrence were analysed. Results For the clinical baseline signature, only the primary tumour volume was selected. The final signature combined the tumour volume with two independent radiomics features. It achieved moderately good discriminatory performance (C-Index [95% confidence interval]: 0.66 [0.55–0.75]) on the validation cohort along with significant patient stratification (p = 0.005) and good calibration. Conclusion We identified and validated a clinical-radiomics signature for LRC of locally advanced HNSCC using a multi-centric retrospective dataset. Prospective validation will be performed on the primary cohort of the HNpradBio trial of the DKTK-ROG once follow-up is completed.
- Published
- 2021
- Full Text
- View/download PDF
8. MRI-based delta-radiomics predicts pathologic complete response in high-grade soft-tissue sarcoma patients treated with neoadjuvant therapy
- Author
-
Katja Specht, Stephanie E. Combs, Stephanie K. Schaub, Hendrik Dapper, Victor Akinkuoroye, Henry C. Woodruff, Matthew J. Nyflot, Rebecca Asadpour, Olena Klymenko, Alexandra S. Gersing, Carolin Knebel, Daniel S Hippe, Philippe Lambin, Nina A. Mayr, Jan C. Peeken, Matthew B. Spraker, Eleanor Y. Chen, RS: GROW - R3 - Innovative Cancer Diagnostics & Therapy, Precision Medicine, and Beeldvorming
- Subjects
medicine.medical_specialty ,Mri ,Delta Radiomics ,Machine Learning ,Neoadjuvant Radiotherapy ,Response Prediction ,Soft-tissue Sarcoma ,medicine.medical_treatment ,FEATURES ,EUROPEAN ORGANIZATION ,Response prediction ,Machine learning ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,EXTREMITY ,Pathological ,Delta radiomics ,Neoadjuvant therapy ,Retrospective Studies ,Neoadjuvant radiotherapy ,Reproducibility ,Receiver operating characteristic ,Proportional hazards model ,business.industry ,Soft tissue sarcoma ,NECROSIS ,Reproducibility of Results ,Multimodal therapy ,Sarcoma ,Hematology ,CHEMOTHERAPY ,medicine.disease ,Magnetic Resonance Imaging ,CANCER ,Neoadjuvant Therapy ,MODEL ,Oncology ,SURVIVAL ,Biomarker (medicine) ,Soft-tissue sarcoma ,FEATURE-SELECTION ,Radiology ,business ,MRI - Abstract
Purpose: In high-grade soft-tissue sarcomas (STS) the standard of care encompasses multimodal therapy regimens. While there is a growing body of evidence for prognostic pretreatment radiomic models, we hypothesized that temporal changes in radiomic features following neoadjuvant treatment ("delta-radio mics") may be able to predict the pathological complete response (pCR). Methods: MRI scans (T1-weighted with fat-saturation and contrast-enhancement (T1FSGd) and T2 weighted with fat-saturation (T2FS)) of patients with STS of the extremities and trunk treated with neoadjuvant therapy were gathered from two independent institutions (training: 103, external testing: 53 patients). pCR was defined as
- Published
- 2021
9. MRI Radiomic Features Are Independently Associated With Overall Survival in Soft Tissue Sarcoma
- Author
-
Matthew J. Nyflot, Meghan W. Macomber, Kevin C Ball, Daniel S. Hippe, L. Wootton, Michael N. Hoff, Edward Y. Kim, Stephanie E. Combs, Matthew B. Spraker, Jan C. Peeken, Seth M. Pollack, and Tobias R. Chapman
- Subjects
Oncology ,lcsh:Medical physics. Medical radiology. Nuclear medicine ,medicine.medical_specialty ,lcsh:R895-920 ,lcsh:RC254-282 ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Internal medicine ,medicine ,Overall survival ,Radiology, Nuclear Medicine and imaging ,Stage (cooking) ,Prognostic models ,medicine.diagnostic_test ,business.industry ,Proportional hazards model ,Soft tissue sarcoma ,Hazard ratio ,Sarcoma ,Magnetic resonance imaging ,medicine.disease ,lcsh:Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,ddc ,030220 oncology & carcinogenesis ,Cohort ,business - Abstract
Purpose: Soft tissue sarcomas (STS) represent a heterogeneous group of diseases, and selection of individualized treatments remains a challenge. The goal of this study was to determine whether radiomic features extracted from magnetic resonance (MR) images are independently associated with overall survival (OS) in STS. Methods and Materials: This study analyzed 2 independent cohorts of adult patients with stage II-III STS treated at center 1 (N=165) and center 2 (N=61). Thirty radiomic features were extracted from pretreatment T1-weighted contrast-enhanced MR images. Prognostic models for OS were derived on the center 1 cohort and validated on the center 2 cohort. Clinical-only (C), radiomics-only (R), and clinical and radiomics (C+R) penalized Cox models were constructed. Model performance was assessed using Harrell's concordance index. Results: In the R model, tumor volume (hazard ratio [HR], 1.5) and 4 texture features (HR, 1.1-1.5) were selected. In the C+R model, both age (HR, 1.4) and grade (HR, 1.7) were selected along with 5 radiomic features. The adjusted c-indices of the 3 models ranged from 0.68 (C) to 0.74 (C+R) in the derivation cohort and 0.68 (R) to 0.78 (C+R) in the validation cohort. The radiomic features were independently associated with OS in the validation cohort after accounting for age and grade (HR, 2.4; P=.009). Conclusions: This study found that radiomic features extracted from MR images are independently associated with OS when accounting for age and tumor grade. The overall predictive performance of 3-year OS using a model based on clinical and radiomic features was replicated in an independent cohort. Optimal models using clinical and radiomic features could improve personalized selection of therapy in patients with STS.
- Published
- 2019
10. Matched-pair comparison of Ga68-PSMA-11 and F18-rhPSMA-7 PET/CT in patients with primary and biochemical recurrence of prostate cancer: Frequency of non-tumor-related uptake and tumor positivity
- Author
-
Marcus R. Makowski, Hans-Juergen Wester, Thomas Horn, Lilit Mirzoyan, Jan C. Peeken, Wolfgang A. Weber, Matthias Eiber, Isabel Rauscher, Markus Kroenke, and Alexander Wurzer
- Subjects
Biochemical recurrence ,PET-CT ,medicine.medical_specialty ,medicine.diagnostic_test ,Genitourinary system ,business.industry ,medicine.disease ,urologic and male genital diseases ,030218 nuclear medicine & medical imaging ,Lesion ,03 medical and health sciences ,Prostate cancer ,0302 clinical medicine ,Positron emission tomography ,030220 oncology & carcinogenesis ,medicine ,Etiology ,Glutamate carboxypeptidase II ,Radiology, Nuclear Medicine and imaging ,Radiology ,medicine.symptom ,business ,Pet ,Prostate Cancer ,Prostate-specific Membrane Antigen (psma) ,Radiohybrid Psma (rhpsma) ,18f-rhpsma-7 ,68ga-psma-11 - Abstract
Radiohybrid prostate-specific membrane antigen (rhPSMA) ligands are a new class of prostate cancer theranostic agents. F-18-rhPSMA-7 offers the advantages of F-18 labeling and low urinary excretion compared with 68Ga-PSMA-11. Here, we compare the frequency of non-tumor-related uptake and tumor positivity with Ga-68-PSMA-11 and F-18-rhPSMA-7 in patients with primary or recurrent prostate cancer. Methods: This retrospective matched-pair comparison matched 160 F-18-rhPSMA-7 with 160 Ga-68-PSMA-11 PET/CT studies for primary staging (n = 33) and biochemical recurrence (n = 127) according to clinical characteristics. Two nuclear medicine physicians reviewed all scans, first identifying all PET-positive lesions and then differentiating lesions suggestive of prostate cancer from those that were benign, on the basis of known pitfalls and ancillary information from CT. For each region, the SUVmax of the lesion with the highest PSMA ligand uptake was noted. Tumor positivity rates were determined, and SUVmax was compared separately for each tracer. Results: F-18-rhPSMA-7 and Ga-68-PSMA-11 PET revealed 566 and 289 PSMA ligand-positive lesions, respectively. Of these, 379 and 100 lesions, equaling 67.0% and 34.6%, respectively, of all PSMA-positive lesions, were considered benign. The distribution of their etiology was similar (42%, 24%, and 25% with 18F-rhPSMA-7 vs. 32%, 24%, and 38% with Ga-68-PSMA-1 1 for ganglia, bone, and unspecific lymph nodes, respectively). All primary tumors were positive with both agents (n = 33 each), whereas slightly more metastatic lesions were observed with Ga-68-PSMA-11 in both disease stages (113 for F-18-rhPSMA-7 and 124 for Ga-68-PSMA-11). The SUVmax of F-18-rhPSMA-7 and Ga-68-PSMA-1 1 did not differ (P > 0.05) in local recurrence or primary prostate cancer; however, the tumor-to-bladder ratio was significantly higher with 18F-rhPSMA-7 (4.9 +/- 5.3 vs. 2.2 +/- 3.7, P = 0.02, for local recurrence; 9.8 +/- 9.7 vs. 2.3 +/- 2.6, P < 0.001, for primary prostate cancer). Conclusion: The tumor positivity rate was consistently high for Ga-68-PSMA-1 1 and F-18-rhPSMA-7. Both tracers revealed a considerable number of areas of uptake that were reliably identified as benign by trained physicians making use of corresponding morphologic imaging and known PSMA pitfalls. These were more frequent with F-18-rhPSMA-7. However, the matched-pair comparison could have introduced a source of bias. Adequate reader training can allow physicians to differentiate benign uptake from disease and be able to benefit from the logistical and clinical advantages of F-18-rhPSMA-7.
- Published
- 2021
11. Prognostic factors in stereotactic body radiotherapy of lung metastases
- Author
-
Kilian Schiller, Kai Joachim Borm, Stefan Münch, L Kroll, Jan C. Peeken, Stephanie E. Combs, Hendrik Dapper, Marciana-Nona Duma, and Markus Oechsner
- Subjects
Adult ,Male ,medicine.medical_specialty ,Lung Neoplasms ,Multivariate analysis ,medicine.medical_treatment ,Radiosurgery ,Disease-Free Survival ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Adverse effect ,Aged ,Retrospective Studies ,Aged, 80 and over ,PET-CT ,Lung ,medicine.diagnostic_test ,business.industry ,Radiotherapy Dosage ,Retrospective cohort study ,Middle Aged ,Prognosis ,Radiation therapy ,medicine.anatomical_structure ,Oncology ,Positron emission tomography ,030220 oncology & carcinogenesis ,Retreatment ,Female ,Radiology ,Neoplasm Recurrence, Local ,business ,Stereotactic body radiotherapy ,Follow-Up Studies - Abstract
The aim of this study was to evaluate prognostic factors in patients with lung metastases who undergo lung stereotactic body radiotherapy (SBRT). A total of 87 patients with 129 lung metastases who underwent SBRT between November 2004 and May 2012 were enrolled in this retrospective study. The patient collective consisted of 54 men (62.1%) and 33 women (37.9%); the median age was 65 years (range 36–88). The Karnofsky performance index was ≥70% (median 90%) for all cases, but one (60%). Adverse effects were categorized using the CTCAE 4.0 classification system. Retrospective analyses regarding patients’ characteristics, progression-free survival (PFS), overall survival (OS), disease-specific survival (DSS), and local tumor control rates (LTC) were performed. On univariate and multivariate analysis OS, DSS, and PFS were significantly (p
- Published
- 2018
- Full Text
- View/download PDF
12. Radiomics in radiooncology – Challenging the medical physicist
- Author
-
Burkhard Rost, Tatyana Goldberg, Fridtjof Nüsslin, Jan J. Wilkens, Stephanie E. Combs, Daniel Cremers, Jan C. Peeken, Benedikt Wiestler, and Michael Bernhofer
- Subjects
Diagnostic Imaging ,Treatment response ,Computer science ,Big data ,Biophysics ,General Physics and Astronomy ,Field (computer science) ,030218 nuclear medicine & medical imaging ,Medical physicist ,03 medical and health sciences ,0302 clinical medicine ,Radiomics ,Artificial Intelligence ,Neoplasms ,Image Processing, Computer-Assisted ,Humans ,Radiology, Nuclear Medicine and imaging ,Radiation treatment planning ,Biological data ,business.industry ,Physics ,General Medicine ,Data science ,030220 oncology & carcinogenesis ,business ,Radiation response - Abstract
Purpose Noticing the fast growing translation of artificial intelligence (AI) technologies to medical image analysis this paper emphasizes the future role of the medical physicist in this evolving field. Specific challenges are addressed when implementing big data concepts with high-throughput image data processing like radiomics and machine learning in a radiooncology environment to support clinical decisions. Methods Based on the experience of our interdisciplinary radiomics working group, techniques for processing minable data, extracting radiomics features and associating this information with clinical, physical and biological data for the development of prediction models are described. A special emphasis was placed on the potential clinical significance of such an approach. Results Clinical studies demonstrate the role of radiomics analysis as an additional independent source of information with the potential to influence the radiooncology practice, i.e. to predict patient prognosis, treatment response and underlying genetic changes. Extending the radiomics approach to integrate imaging, clinical, genetic and dosimetric data (‘panomics’) challenges the medical physicist as member of the radiooncology team. Conclusions The new field of big data processing in radiooncology offers opportunities to support clinical decisions, to improve predicting treatment outcome and to stimulate fundamental research on radiation response both of tumor and normal tissue. The integration of physical data (e.g. treatment planning, dosimetric, image guidance data) demands an involvement of the medical physicist in the radiomics approach of radiooncology. To cope with this challenge national and international organizations for medical physics should organize more training opportunities in artificial intelligence technologies in radiooncology.
- Published
- 2018
- Full Text
- View/download PDF
13. Treatment-related features improve machine learning prediction of prognosis in soft tissue sarcoma patients
- Author
-
Michael Bernhofer, Jan C. Peeken, Fridtjof Nüsslin, Francesco Pasa, Christoph Knie, Kerstin A. Kessel, Burkhard Rost, Stephanie E. Combs, Basil Komboz, Tatyana Goldberg, Pouya D. Tafti, and Andreas E. Braun
- Subjects
Adult ,Male ,medicine.medical_treatment ,Machine learning ,computer.software_genre ,Risk Assessment ,030218 nuclear medicine & medical imaging ,Cohort Studies ,Machine Learning ,03 medical and health sciences ,0302 clinical medicine ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Aged ,Neoplasm Staging ,Proportional Hazards Models ,Retrospective Studies ,Aged, 80 and over ,business.industry ,Soft tissue sarcoma ,Sarcoma ,Retrospective cohort study ,Middle Aged ,Prognosis ,medicine.disease ,Precision medicine ,Neoadjuvant Therapy ,Biomarker (cell) ,Random forest ,Survival Rate ,Radiation therapy ,Oncology ,030220 oncology & carcinogenesis ,Disease Progression ,Prognostic model ,Female ,Artificial intelligence ,Risk assessment ,business ,computer - Abstract
Current prognostic models for soft tissue sarcoma (STS) patients are solely based on staging information. Treatment-related data have not been included to date. Including such information, however, could help to improve these models. A single-center retrospective cohort of 136 STS patients treated with radiotherapy (RT) was analyzed for patients’ characteristics, staging information, and treatment-related data. Therapeutic imaging studies and pathology reports of neoadjuvantly treated patients were analyzed for signs of response. Random forest machine learning-based models were used to predict patients’ death and disease progression at 2 years. Pre-treatment and treatment models were compared. The prognostic models achieved high performances. Using treatment features improved the overall performance for all three classification types: prediction of death, and of local and systemic progression (area under the receiver operatoring characteristic curve (AUC) of 0.87, 0.88, and 0.84, respectively). Overall, RT-related features, such as the planning target volume and total dose, had preeminent importance for prognostic performance. Therapy response features were selected for prediction of disease progression. A machine learning-based prognostic model combining known prognostic factors with treatment- and response-related information showed high accuracy for individualized risk assessment. This model could be used for adjustments of follow-up procedures.
- Published
- 2018
- Full Text
- View/download PDF
14. 'Radio-oncomics'
- Author
-
Fridtjof Nüsslin, Stephanie E. Combs, and Jan C. Peeken
- Subjects
medicine.medical_treatment ,Feature extraction ,Radiogenomics ,Medical Oncology ,Machine learning ,computer.software_genre ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Neoplasms ,medicine ,Humans ,Preprocessor ,Radiology, Nuclear Medicine and imaging ,Segmentation ,business.industry ,Radiotherapy Planning, Computer-Assisted ,Image Enhancement ,Precision medicine ,Radiation therapy ,Workflow ,Oncology ,030220 oncology & carcinogenesis ,Tomography ,Artificial intelligence ,Radiology ,business ,computer ,Forecasting ,Radiotherapy, Image-Guided - Abstract
Introduction Radiomics, a recently introduced concept, describes quantitative computerized algorithm-based feature extraction from imaging data including computer tomography (CT), magnetic resonance imaging (MRT), or positron-emission tomography (PET) images. For radiation oncology it offers the potential to significantly influence clinical decision-making and thus therapy planning and follow-up workflow. Methods After image acquisition, image preprocessing, and defining regions of interest by structure segmentation, algorithms are applied to calculate shape, intensity, texture, and multiscale filter features. By combining multiple features and correlating them with clinical outcome, prognostic models can be created. Results Retrospective studies have proposed radiomics classifiers predicting, e. g., overall survival, radiation treatment response, distant metastases, or radiation-related toxicity. Besides, radiomics features can be correlated with genomic information ("radiogenomics") and could be used for tumor characterization. Discussion Distinct patterns based on data-based as well as genomics-based features will influence radiation oncology in the future. Individualized treatments in terms of dose level adaption and target volume definition, as well as other outcome-related parameters will depend on radiomics and radiogenomics. By integration of various datasets, the prognostic power can be increased making radiomics a valuable part of future precision medicine approaches. Conclusion This perspective demonstrates the evidence for the radiomics concept in radiation oncology. The necessity of further studies to integrate radiomics classifiers into clinical decision-making and the radiation therapy workflow is emphasized.
- Published
- 2017
- Full Text
- View/download PDF
15. PO-1579: Deep learning based gross tumor volume definition on planning CTs of soft tissue sarcoma
- Author
-
Jan J. Wilkens, Matthew B. Spraker, Stefan Bartzsch, Stephanie E. Combs, Jan C. Peeken, Matthew J. Nyflot, and D. Lang
- Subjects
medicine.medical_specialty ,Oncology ,business.industry ,Soft tissue sarcoma ,Medicine ,Radiology, Nuclear Medicine and imaging ,Hematology ,Radiology ,business ,medicine.disease ,Gross tumor volume - Published
- 2020
- Full Text
- View/download PDF
16. A Radiomic Surrogate to Predict Tumor-Infiltrating CD8 T-Cells in Soft Tissue Sarcoma
- Author
-
Matthew J. Nyflot, Matthew B. Spraker, Seth M. Pollack, L. Wootton, Jan C. Peeken, Daniel S. Hippe, Stephanie E. Combs, Paul E. Kinahan, Edward Y. Kim, W. Blumenschein, T. Kim, T.K. McClanahan, and Stephanie K. Schaub
- Subjects
Cancer Research ,Pathology ,medicine.medical_specialty ,Radiation ,Oncology ,business.industry ,Soft tissue sarcoma ,medicine ,Cytotoxic T cell ,Radiology, Nuclear Medicine and imaging ,medicine.disease ,business - Published
- 2020
- Full Text
- View/download PDF
17. PH-0719: 18F-FDG-PET/CT parameters as predictors of survival and response to nCRT in esophageal cancer
- Author
-
Jan C. Peeken, B. Haller, Wolfgang Weber, M. Jesinghaus, T. Pyka, Stephanie E. Combs, Wilko Weichert, Stefan Münch, and L. Marr
- Subjects
medicine.medical_specialty ,Oncology ,business.industry ,medicine ,Radiology, Nuclear Medicine and imaging ,Fdg pet ct ,Hematology ,Radiology ,Esophageal cancer ,medicine.disease ,business - Published
- 2020
- Full Text
- View/download PDF
18. Dosimetric comparison of organs at risk using different contouring guidelines for definition of the clinical target volume in anal cancer
- Author
-
Christian Diehl, Stephanie E. Combs, Hendrik Dapper, Markus Oechsner, Jan C. Peeken, Stefan Münch, and Kai Joachim Borm
- Subjects
Adult ,Male ,Organs at Risk ,Imrt plan ,medicine.medical_treatment ,Planning target volume ,030218 nuclear medicine & medical imaging ,Cohort Studies ,03 medical and health sciences ,0302 clinical medicine ,medicine ,Anal cancer ,Humans ,Radiology, Nuclear Medicine and imaging ,Dose distribution ,Radiometry ,Pelvis ,Inguinal lymph nodes ,Aged ,Neoplasm Staging ,Aged, 80 and over ,Contouring ,Volumetric arc therapy ,business.industry ,Chemoradiotherapy, Adjuvant ,Middle Aged ,medicine.disease ,Anus Neoplasms ,Combined Modality Therapy ,Anal Cancer ,Contouring Guidelines ,Organs At Risk ,Dose Distribution ,Inguinal Lymph Nodes ,ddc ,Radiation therapy ,medicine.anatomical_structure ,Contouring guidelines ,Oncology ,030220 oncology & carcinogenesis ,Comparison study ,Female ,Original Article ,business ,Nuclear medicine - Abstract
Background There are different contouring guidelines for definition of the clinical target volume (CTV) for intensity-modulated radiation therapy (IMRT) of anal cancer (AC). We conducted a planning comparison study to evaluate and compare the dose to relevant organs at risk (OARs) while using different CTV definitions. Methods Twelve patients with a primary diagnosis of anal cancer, who were treated with primary chemoradiation (CRT), were selected. We generated four guideline-specific CTVs and subsequently planned target volumes (PTVs) on the planning CT scan of each patient. An IMRT plan for volumetric arc therapy (VMAT) was set up for each PTV. Dose parameters of the planned target volume (PTV) and OARs were evaluated and compared, too. Results The mean volume of the four PTVs ranged from 2138 cc to 2433 cc. The target volumes contoured by the authors based on the recommendations of each group were similar in the pelvis, while they differed significantly in the inguinal region. There were no significant differences between the four target volumes with regard to the dose parameters of the cranially located OARs. Conversely, some dose parameters concerning the genitals and the skin varied significantly among the different guidelines. Conclusion The four contouring guidelines differ significantly concerning the inguinal region. In order to avoid inguinal recurrence and to protect relevant OARs, further investigations are needed to generate uniform standards for definition of the elective clinical target volume in the inguinal region.
- Published
- 2019
19. Combining multimodal imaging and treatment features improves machine learning-based prognostic assessment in patients with glioblastoma multiforme
- Author
-
Jan C. Peeken, Tatyana Goldberg, Stephanie E. Combs, Kerstin A. Kessel, Michael Bernhofer, Claus Zimmer, Thomas Pyka, Pouya D. Tafti, Benedikt Wiestler, Andreas E. Braun, Burkhard Rost, and Fridtjof Nüsslin
- Subjects
0301 basic medicine ,Male ,Cancer Research ,FET‐PET ,computer.software_genre ,Multimodal Imaging ,Machine Learning ,0302 clinical medicine ,Positron Emission Tomography Computed Tomography ,Medicine ,prognostic model ,Original Research ,Aged, 80 and over ,Brain Neoplasms ,Middle Aged ,VASARI ,Prognosis ,Magnetic Resonance Imaging ,ddc ,Oncology ,Chemotherapy, Adjuvant ,030220 oncology & carcinogenesis ,biomarker ,Female ,MRI ,Adult ,Machine learning ,03 medical and health sciences ,Young Adult ,Overall survival ,Humans ,Radiology, Nuclear Medicine and imaging ,In patient ,Pathological ,Aged ,Multimodal imaging ,business.industry ,glioblastoma ,Clinical Cancer Research ,Nomogram ,Models, Theoretical ,medicine.disease ,Survival Analysis ,Confidence interval ,Biomarker (cell) ,030104 developmental biology ,Biomarker ,Fet-pet ,Glioblastoma ,Mri ,Prognostic Model ,Vasari ,Artificial intelligence ,business ,computer - Abstract
Cancer Medicine published by John Wiley & Sons Ltd. BACKGROUND: For Glioblastoma (GBM), various prognostic nomograms have been proposed. This study aims to evaluate machine learning models to predict patients' overall survival (OS) and progression-free survival (PFS) on the basis of clinical, pathological, semantic MRI-based, and FET-PET/CT-derived information. Finally, the value of adding treatment features was evaluated. METHODS: One hundred and eighty-nine patients were retrospectively analyzed. We assessed clinical, pathological, and treatment information. The VASARI set of semantic imaging features was determined on MRIs. Metabolic information was retained from preoperative FET-PET/CT images. We generated multiple random survival forest prediction models on a patient training set and performed internal validation. Single feature class models were created including "clinical," "pathological," "MRI-based," and "FET-PET/CT-based" models, as well as combinations. Treatment features were combined with all other features. RESULTS: Of all single feature class models, the MRI-based model had the highest prediction performance on the validation set for OS (C-index: 0.61 [95% confidence interval: 0.51-0.72]) and PFS (C-index: 0.61 [0.50-0.72]). The combination of all features did increase performance above all single feature class models up to C-indices of 0.70 (0.59-0.84) and 0.68 (0.57-0.78) for OS and PFS, respectively. Adding treatment information further increased prognostic performance up to C-indices of 0.73 (0.62-0.84) and 0.71 (0.60-0.81) on the validation set for OS and PFS, respectively, allowing significant stratification of patient groups for OS. CONCLUSIONS: MRI-based features were the most relevant feature class for prognostic assessment. Combining clinical, pathological, and imaging information increased predictive power for OS and PFS. A further increase was achieved by adding treatment features.
- Published
- 2019
20. SP-0518: Development and validation of a deltaradiomics response model for neoadjuvant radiotherapy of soft tissue sarcomas
- Author
-
Matthew J. Nyflot, Katja Specht, Stephanie E. Combs, Daniel S Hippe, Edward Y. Kim, Nina A. Mayr, Eleanor Y. Chen, and Jan C. Peeken
- Subjects
Radiation therapy ,medicine.medical_specialty ,Oncology ,Response model ,business.industry ,medicine.medical_treatment ,medicine ,Soft tissue ,Radiology, Nuclear Medicine and imaging ,Hematology ,Radiology ,business - Published
- 2020
- Full Text
- View/download PDF
21. Deep learning derived tumor infiltration maps for personalized target definition in Glioblastoma radiotherapy
- Author
-
Miguel Molina-Romero, Bjoern H. Menze, Claus Zimmer, Benedikt Wiestler, Jan C. Peeken, Bernhard Meyer, Stephanie E. Combs, Christoph Straube, and Christian Diehl
- Subjects
Adult ,Male ,medicine.medical_treatment ,Fluid-attenuated inversion recovery ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Text mining ,Deep Learning ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Precision Medicine ,Radiation treatment planning ,Aged ,Retrospective Studies ,Aged, 80 and over ,medicine.diagnostic_test ,business.industry ,Brain Neoplasms ,Radiotherapy Planning, Computer-Assisted ,Magnetic resonance imaging ,Radiotherapy Dosage ,Hematology ,Middle Aged ,Hyperintensity ,Radiation therapy ,Diffusion Tensor Imaging ,Oncology ,030220 oncology & carcinogenesis ,Concomitant ,Female ,Neoplasm Recurrence, Local ,Nuclear medicine ,business ,Glioblastoma ,Diffusion MRI - Abstract
Purpose Glioblastoma is routinely treated by concomitant radiochemotherapy. Current target definition guidelines use anatomic MRI (magnetic resonance imaging) scans, taking into account contrast enhancement and the rather unspecific hyperintensity on the fluid-attenuated inversion recovery (FLAIR) sequence. Methods and materials We applied deep learning based free water correction of diffusion tensor imaging (DTI) scans to estimate the infiltrative gross tumor volume (iGTV) inside of the FLAIR hyperintense region. We analyzed the resulting iGTVs and their impact on target volume definition in a retrospective cohort of 33 GBM patients. Results iGTVs were significantly smaller compared to standard pre- and post-operative gross tumor volume (GTV) definitions. Two novel infiltrative tumor GTVs (nGTVPRE-OP and nGTVPOST-OP) defined as the conjunction volume of the standard GTV and the iGTV showed only a moderate increase in size compared to standard GTV definitions. On postoperative scans, the iGTV was predominantly covered by the two clinical target volume (CTV) concepts CTVEORTC and CTVROTG1. A novel infiltrative tumor CTV (nCTV) [nGTVPOST-OP + 2 cm margin] was significantly smaller compared to CTVROTG1 but larger than CTVEORTC. The overlap volume and conformity index demonstrated a distinct spatial configuration of the nCTV. Tumor recurrences overlapped with the iGTV in all but one patients and were completely covered by the nCTV in all patients. After reducing the margin to 1 cm recurrences coverage was at least in-field in all patients. Conclusion To conclude, free water corrected DTI scans may help to define infiltrative tumor areas of GBM that could ultimately be used to individualize RT treatment planning in terms of dose sparing or dose escalation.
- Published
- 2018
22. CT-based radiomic features predict tumor grading and have prognostic value in patients with soft tissue sarcomas treated with neoadjuvant radiation therapy
- Author
-
Ahmed Thamer, Jan C. Peeken, Armin Ott, Michael Bernhofer, Burkhard Rost, Nina A. Mayr, Fridtjof Nüsslin, Daniela Pfeiffer, Stephanie E. Combs, Matthew B. Spraker, Mohammed A. Shouman, Michal Devecka, and Matthew J. Nyflot
- Subjects
Adult ,Male ,medicine.medical_specialty ,medicine.medical_treatment ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Progression-free survival ,Radiometry ,Grading (tumors) ,Retrospective Studies ,Receiver operating characteristic ,Proportional hazards model ,business.industry ,Soft tissue sarcoma ,Univariate ,Soft tissue ,Sarcoma ,Hematology ,Middle Aged ,medicine.disease ,Prognosis ,Neoadjuvant Therapy ,Radiation therapy ,Oncology ,030220 oncology & carcinogenesis ,Female ,Radiology ,Neoplasm Grading ,business ,Tomography, X-Ray Computed ,Soft Tissue Sarcoma ,Radiomics ,Neoadjuvant Radiotherapy ,Biomarker ,Machine Learning ,Tumor Grading - Abstract
Purpose In soft tissue sarcoma (STS) patients systemic progression and survival remain comparably low despite low local recurrence rates. In this work, we investigated whether quantitative imaging features (“radiomics”) of radiotherapy planning CT-scans carry a prognostic value for pre-therapeutic risk assessment. Methods CT-scans, tumor grade, and clinical information were collected from three independent retrospective cohorts of 83 (TUM), 87 (UW) and 51 (McGill) STS patients, respectively. After manual segmentation and preprocessing, 1358 radiomic features were extracted. Feature reduction and machine learning modeling for the prediction of grading, overall survival (OS), distant (DPFS) and local (LPFS) progression free survival were performed followed by external validation. Results Radiomic models were able to differentiate grade 3 from non-grade 3 STS (area under the receiver operator characteristic curve (AUC): 0.64). The Radiomic models were able to predict OS (C-index: 0.73), DPFS (C-index: 0.68) and LPFS (C-index: 0.77) in the validation cohort. A combined clinical-radiomics model showed the best prediction for OS (C-index: 0.76). The radiomic scores were significantly associated in univariate and multivariate cox regression and allowed for significant risk stratification for all three endpoints. Conclusion This is the first report demonstrating a prognostic potential and tumor grading differentiation by CT-based radiomics.
- Published
- 2018
23. CT-Based Radiomics Can Improve the Prediction of Recurrent Prostate Cancer-Positive Lymph Nodes
- Author
-
Mohamed A. Shouman, Jan C. Peeken, Tobias Maurer, J.E. Gschwend, M. Eiber, M. Kroenke, Stephanie E. Combs, and Wolfgang Weber
- Subjects
Oncology ,Cancer Research ,medicine.medical_specialty ,Radiation ,Radiomics ,business.industry ,Internal medicine ,Medicine ,Radiology, Nuclear Medicine and imaging ,Recurrent prostate cancer ,Lymph ,business - Published
- 2019
- Full Text
- View/download PDF
24. OC-0386 A PET-based patterns of failure analysis in the context of contouring guidelines in anal cancer
- Author
-
Stephanie E. Combs, Hendrik Dapper, Wolfgang Weber, Stefan Münch, Jan C. Peeken, Kilian Schiller, and Kai Joachim Borm
- Subjects
Patterns of failure ,Contouring ,medicine.medical_specialty ,Oncology ,business.industry ,medicine ,Anal cancer ,Radiology, Nuclear Medicine and imaging ,Context (language use) ,Hematology ,Radiology ,medicine.disease ,business - Published
- 2019
- Full Text
- View/download PDF
25. Semantic imaging features predict disease progression and survival in glioblastoma multiforme patients
- Author
-
Kerstin A. Kessel, Bernhard Haller, Josefine Hesse, Fridtjof Nüsslin, Stephanie E. Combs, and Jan C. Peeken
- Subjects
Oncology ,Adult ,Male ,medicine.medical_specialty ,Multivariate statistics ,Concordance ,Datasets as Topic ,Disease-Free Survival ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,Young Adult ,0302 clinical medicine ,Internal medicine ,Image Interpretation, Computer-Assisted ,medicine ,Humans ,Radiology, Nuclear Medicine and imaging ,Progression-free survival ,Survival analysis ,Aged ,Retrospective Studies ,Semantic Web ,Aged, 80 and over ,Univariate analysis ,Proportional hazards model ,business.industry ,Brain Neoplasms ,Univariate ,Middle Aged ,Prognosis ,Magnetic Resonance Imaging ,030220 oncology & carcinogenesis ,Disease Progression ,Biomarker (medicine) ,Female ,business ,Glioblastoma ,Software - Abstract
For glioblastoma (GBM), multiple prognostic factors have been identified. Semantic imaging features were shown to be predictive for survival prediction. No similar data have been generated for the prediction of progression. The aim of this study was to assess the predictive value of the semantic visually accessable REMBRANDT [repository for molecular brain neoplasia data] images (VASARI) imaging feature set for progression and survival, and the creation of joint prognostic models in combination with clinical and pathological information. 189 patients were retrospectively analyzed. Age, Karnofsky performance status, gender, and MGMT promoter methylation and IDH mutation status were assessed. VASARI features were determined on pre- and postoperative MRIs. Predictive potential was assessed with univariate analyses and Kaplan–Meier survival curves. Following variable selection and resampling, multivariate Cox regression models were created. Predictive performance was tested on patient test sets and compared between groups. The frequency of selection for single variables and variable pairs was determined. For progression free survival (PFS) and overall survival (OS), univariate significant associations were shown for 9 and 10 VASARI features, respectively. Multivariate models yielded concordance indices significantly different from random for the clinical, imaging, combined, and combined + MGMT models of 0.657, 0.636, 0.694, and 0.716 for OS, and 0.602, 0.604, 0.633, and 0.643 for PFS. “Multilocality,” “deep white-matter invasion,” “satellites,” and “ependymal invasion” were over proportionally selected for multivariate model generation, underlining their importance. We demonstrated a predictive value of several qualitative imaging features for progression and survival. The performance of prognostic models was increased by combining clinical, pathological, and imaging features.
- Published
- 2017
26. MRI-Based Radiomic Models Predict Tumor Grading in Soft-Tissue Sarcoma Patients
- Author
-
Jan C. Peeken, Armin Ott, Carolin Knebel, Stephanie E. Combs, Hendrik Dapper, Matthew J. Nyflot, Daniela Pfeiffer, Nina A. Mayr, Matthew B. Spraker, F. Nuesslin, Ahmed Thamer, R. von Eisenhart-Rothe, and Mohamed A. Shouman
- Subjects
Cancer Research ,medicine.medical_specialty ,Radiation ,Oncology ,business.industry ,Soft tissue sarcoma ,medicine ,Tumor Grading ,Radiology, Nuclear Medicine and imaging ,Radiology ,medicine.disease ,business - Published
- 2019
- Full Text
- View/download PDF
27. Patterns of Inguinal Lymph Node Involvement in Anal Cancer - a Detailed PET-Imaging Based Analysis
- Author
-
Stefan Münch, Wolfgang A. Weber, Kai Joachim Borm, Jan C. Peeken, Stephanie E. Combs, Hendrik Dapper, and Kilian Schiller
- Subjects
Cancer Research ,medicine.medical_specialty ,Radiation ,Oncology ,business.industry ,Inguinal lymph nodes ,Medicine ,Anal cancer ,Radiology, Nuclear Medicine and imaging ,Pet imaging ,Radiology ,business ,medicine.disease - Published
- 2019
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.