12 results on '"Bassil, Alex"'
Search Results
2. Preclinical Evaluation of the ATR Inhibitor BAY 1895344 as a Radiosensitizer for Head and Neck Squamous Cell Carcinoma
- Author
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Odhiambo, Diana A., Pittman, Allison N., Rickard, Ashlyn G., Castillo, Rico J., Bassil, Alex M., Chen, Joshua, Ravotti, Madison L., Xu, Eric S., Himes, Jonathan E., Daniel, Andrea R., Watts, Tammara L., Williams, Nerissa T., Luo, Lixia, Kirsch, David G., and Mowery, Yvonne M.
- Published
- 2024
- Full Text
- View/download PDF
3. MR histology reveals tissue features beneath heterogeneous MRI signal in genetically engineered mouse models of sarcoma.
- Author
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Blocker, Stephanie J., Mowery, Yvonne M., Everitt, Jeffrey I., Cook, James, Cofer, Gary Price, Yi Qi, Bassil, Alex M., Xu, Eric S., Kirsch, David G., Badea, Cristian T., and Johnson, G. Allan
- Subjects
HISTOLOGY ,LABORATORY mice ,MAGNETIC resonance imaging ,SARCOMA ,MULTIPLE comparisons (Statistics) - Abstract
Purpose: To identify significant relationships between quantitative cytometric tissue features and quantitative MR (qMRI) intratumorally in preclinical undifferentiated pleomorphic sarcomas (UPS). Materials and methods: In a prospective study of genetically engineered mouse models of UPS, we registered imaging libraries consisting of matched multicontrast in vivo MRI, three-dimensional (3D) multi-contrast high-resolution ex vivo MR histology (MRH), and two-dimensional (2D) tissue slides. From digitized histology we generated quantitative cytometric feature maps from whole-slide automated nuclear segmentation. We automatically segmented intratumoral regions of distinct qMRI values and measured corresponding cytometric features. Linear regression analysis was performed to compare intratumoral qMRI and tissue cytometric features, and results were corrected for multiple comparisons. Linear correlations between qMRI and cytometric features with p values of <0.05 after correction for multiple comparisons were considered significant. Results: Three features correlated with ex vivo apparent diffusion coefficient (ADC), and no features correlated with in vivo ADC. Six features demonstrated significant linear relationships with ex vivo T2*, and fifteen features correlated significantly with in vivo T2*. In both cases, nuclear Haralick texture features were the most prevalent type of feature correlated with T2*. A small group of nuclear topology features also correlated with one or both T2* contrasts, and positive trends were seen between T2* and nuclear size metrics. Conclusion: Registered multi-parametric imaging datasets can identify quantitative tissue features which contribute to UPS MR signal. T2* may provide quantitative information about nuclear morphology and pleomorphism, adding histological insights to radiological interpretation of UPS. [ABSTRACT FROM AUTHOR]
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- 2024
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- View/download PDF
4. Minocycline microspheres did not significantly improve outcomes after collagenase injection of tendon
- Author
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Allen, Andrew D., Bassil, Alex M., Berkoff, David J., Al Maliki, Mohammed, Draeger, Reid W., and Weinhold, Paul S.
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- 2019
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5. Single cell analysis reveals distinct immune landscapes in transplant and primary sarcomas that determine response or resistance to immunotherapy
- Author
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Wisdom, Amy J., Mowery, Yvonne M., Hong, Cierra S., Himes, Jonathon E., Nabet, Barzin Y., Qin, Xiaodi, Zhang, Dadong, Chen, Lan, Fradin, Hélène, Patel, Rutulkumar, Bassil, Alex M., Muise, Eric S., King, Daniel A., Xu, Eric S., Carpenter, David J., Kent, Collin L., Smythe, Kimberly S., Williams, Nerissa T., Luo, Lixia, Ma, Yan, Alizadeh, Ash A., Owzar, Kouros, Diehn, Maximilian, Bradley, Todd, and Kirsch, David G.
- Published
- 2020
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6. Photon Counting CT and Radiomic Analysis Enables Differentiation of Tumors Based on Lymphocyte Burden.
- Author
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Allphin, Alex J., Mowery, Yvonne M., Lafata, Kyle J., Clark, Darin P., Bassil, Alex M., Castillo, Rico, Odhiambo, Diana, Holbrook, Matthew D., Ghaghada, Ketan B., and Badea, Cristian T.
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PHOTON counting ,LYMPHOCYTES ,X-ray computed microtomography ,SPECTRAL imaging ,SARCOMA ,GENETIC load - Abstract
The purpose of this study was to investigate if radiomic analysis based on spectral micro-CT with nanoparticle contrast-enhancement can differentiate tumors based on lymphocyte burden. High mutational load transplant soft tissue sarcomas were initiated in Rag2
+/− and Rag2−/− mice to model varying lymphocyte burden. Mice received radiation therapy (20 Gy) to the tumor-bearing hind limb and were injected with a liposomal iodinated contrast agent. Five days later, animals underwent conventional micro-CT imaging using an energy integrating detector (EID) and spectral micro-CT imaging using a photon-counting detector (PCD). Tumor volumes and iodine uptakes were measured. The radiomic features (RF) were grouped into feature-spaces corresponding to EID, PCD, and spectral decomposition images. The RFs were ranked to reduce redundancy and increase relevance based on TL burden. A stratified repeated cross validation strategy was used to assess separation using a logistic regression classifier. Tumor iodine concentration was the only significantly different conventional tumor metric between Rag2+/− (TLs present) and Rag2−/− (TL-deficient) tumors. The RFs further enabled differentiation between Rag2+/− and Rag2−/− tumors. The PCD-derived RFs provided the highest accuracy (0.68) followed by decomposition-derived RFs (0.60) and the EID-derived RFs (0.58). Such non-invasive approaches could aid in tumor stratification for cancer therapy studies. [ABSTRACT FROM AUTHOR]- Published
- 2022
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7. Detection of Lung Nodules in Micro-CT Imaging Using Deep Learning.
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Holbrook, Matthew D., Clark, Darin P., Patel, Rutulkumar, Yi Qi, Bassil, Alex M., Mowery, Yvonne M., and Badea, Cristian T.
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DEEP learning ,PULMONARY nodules ,COMPUTED tomography ,METASTASIS ,CANCER radioimmunotherapy - Abstract
We are developing imaging methods for a co-clinical trial investigating synergy between immunotherapy and radiotherapy. We perform longitudinal micro-computed tomography (micro-CT) of mice to detect lung metastasis after treatment. This work explores deep learning (DL) as a fast approach for automated lung nodule detection. We used data from control mice both with and without primary lung tumors. To augment the number of training sets, we have simulated data using real augmented tumors inserted into micro-CT scans. We employed a convolutional neural network (CNN), trained with four competing types of training data: (1) simulated only, (2) real only, (3) simulated and real, and (4) pretraining on simulated followed with real data. We evaluated our model performance using precision and recall curves, as well as receiver operating curves (ROC) and their area under the curve (AUC). The AUC appears to be almost identical (0.76-0.77) for all four cases. However, the combination of real and synthetic data was shown to improve precision by 8%. Smaller tumors have lower rates of detection than larger ones, with networks trained on real data showing better performance. Our work suggests that DL is a promising approach for fast and relatively accurate detection of lung tumors in mice. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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8. Neoadjuvant Radiation Therapy and Surgery Improves Metastasis-Free Survival over Surgery Alone in a Primary Mouse Model of Soft Tissue Sarcoma.
- Author
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Patel R, Mowery YM, Qi Y, Bassil AM, Holbrook M, Xu ES, Hong CS, Himes JE, Williams NT, Everitt J, Ma Y, Luo L, Selitsky SR, Modliszewski JL, Gao J, Jung SH, Kirsch DG, and Badea CT
- Subjects
- Mice, Animals, Neoadjuvant Therapy, Tumor Suppressor Protein p53 genetics, Progression-Free Survival, Disease-Free Survival, Retrospective Studies, Radiotherapy, Adjuvant, Neoplasm Recurrence, Local pathology, Sarcoma radiotherapy, Soft Tissue Neoplasms pathology, Soft Tissue Neoplasms surgery
- Abstract
This study aims to investigate whether adding neoadjuvant radiotherapy (RT), anti-programmed cell death protein-1 (PD-1) antibody (anti-PD-1), or RT + anti-PD-1 to surgical resection improves disease-free survival for mice with soft tissue sarcomas (STS). We generated a high mutational load primary mouse model of STS by intramuscular injection of adenovirus expressing Cas9 and guide RNA targeting Trp53 and intramuscular injection of 3-methylcholanthrene (MCA) into the gastrocnemius muscle of wild-type mice (p53/MCA model). We randomized tumor-bearing mice to receive isotype control or anti-PD-1 antibody with or without radiotherapy (20 Gy), followed by hind limb amputation. We used micro-CT to detect lung metastases with high spatial resolution, which was confirmed by histology. We investigated whether sarcoma metastasis was regulated by immunosurveillance by lymphocytes or tumor cell-intrinsic mechanisms. Compared with surgery with isotype control antibody, the combination of anti-PD-1, radiotherapy, and surgery improved local recurrence-free survival (P = 0.035) and disease-free survival (P = 0.005), but not metastasis-free survival. Mice treated with radiotherapy, but not anti-PD-1, showed significantly improved local recurrence-free survival and metastasis-free survival over surgery alone (P = 0.043 and P = 0.007, respectively). The overall metastasis rate was low (∼12%) in the p53/MCA sarcoma model, which limited the power to detect further improvement in metastasis-free survival with addition of anti-PD-1 therapy. Tail vein injections of sarcoma cells into immunocompetent mice suggested that impaired metastasis was due to inability of sarcoma cells to grow in the lungs rather than a consequence of immunosurveillance. In conclusion, neoadjuvant radiotherapy improves metastasis-free survival after surgery in a primary model of STS., (©2022 American Association for Cancer Research.)
- Published
- 2023
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- View/download PDF
9. Photon Counting CT and Radiomic Analysis Enables Differentiation of Tumors Based on Lymphocyte Burden.
- Author
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Allphin AJ, Mowery YM, Lafata KJ, Clark DP, Bassil AM, Castillo R, Odhiambo D, Holbrook MD, Ghaghada KB, and Badea CT
- Subjects
- Animals, Lymphocytes pathology, Mice, Phantoms, Imaging, X-Ray Microtomography, Contrast Media, Sarcoma diagnostic imaging
- Abstract
The purpose of this study was to investigate if radiomic analysis based on spectral micro-CT with nanoparticle contrast-enhancement can differentiate tumors based on lymphocyte burden. High mutational load transplant soft tissue sarcomas were initiated in Rag2
+/- and Rag2-/- mice to model varying lymphocyte burden. Mice received radiation therapy (20 Gy) to the tumor-bearing hind limb and were injected with a liposomal iodinated contrast agent. Five days later, animals underwent conventional micro-CT imaging using an energy integrating detector (EID) and spectral micro-CT imaging using a photon-counting detector (PCD). Tumor volumes and iodine uptakes were measured. The radiomic features (RF) were grouped into feature-spaces corresponding to EID, PCD, and spectral decomposition images. The RFs were ranked to reduce redundancy and increase relevance based on TL burden. A stratified repeated cross validation strategy was used to assess separation using a logistic regression classifier. Tumor iodine concentration was the only significantly different conventional tumor metric between Rag2+/- (TLs present) and Rag2-/- (TL-deficient) tumors. The RFs further enabled differentiation between Rag2+/- and Rag2-/- tumors. The PCD-derived RFs provided the highest accuracy (0.68) followed by decomposition-derived RFs (0.60) and the EID-derived RFs (0.58). Such non-invasive approaches could aid in tumor stratification for cancer therapy studies.- Published
- 2022
- Full Text
- View/download PDF
10. An investigation of kV mini-GRID spatially fractionated radiation therapy: dosimetry and preclinical trial.
- Author
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Johnson TR, Bassil AM, Williams NT, Brundage S, Kent CL, Palmer G, Mowery YM, and Oldham M
- Subjects
- Animals, Dose Fractionation, Radiation, Mice, Mice, Inbred C57BL, Tumor Burden, Neoplasms radiotherapy, Radiometry
- Abstract
Objective . To develop and characterize novel methods of extreme spatially fractionated kV radiation therapy (including mini-GRID therapy) and to evaluate efficacy in the context of a pre-clinical mouse study. Approach . Spatially fractionated GRIDs were precision-milled from 3 mm thick lead sheets compatible with mounting on a 225 kVp small animal irradiator (X-Rad). Three pencil-beam GRIDs created arrays of 1 mm diameter beams, and three 'bar' GRIDs created 1 × 20 mm rectangular fields. GRIDs projected 20 × 20 mm
2 fields at isocenter, and beamlets were spaced at 1, 1.25, and 1.5 mm, respectively. Peak-to-valley ratios and dose distributions were evaluated with Gafchromic film. Syngeneic transplant tumors were induced by intramuscular injection of a soft tissue sarcoma cell line into the gastrocnemius muscle of C57BL/6 mice. Tumor-bearing mice were randomized to four groups: unirradiated control, conventional irradiation of entire tumor, GRID therapy, and hemi-irradiation (half-beam block, 50% tumor volume treated). All irradiated mice received a single fraction of 15 Gy. Results . High peak-to-valley ratios were achieved (bar GRIDs: 11.9 ± 0.9, 13.6 ± 0.4, 13.8 ± 0.5; pencil-beam GRIDs: 18.7 ± 0.6, 26.3 ± 1.5, 31.0 ± 3.3). Pencil-beam GRIDs could theoretically spare more intra-tumor immune cells than bar GRIDs, but they treat less tumor tissue (3%-4% versus 19%-23% area receiving 90% prescription, respectively). Bar GRID and hemi-irradiation treatments significantly delayed tumor growth ( P < 0.05), but not as much as a conventional treatment ( P < 0.001). No significant difference was found in tumor growth delay between GRID and hemi-irradiation. Significance . High peak-to-valley ratios were achieved with kV grids: two-to-five times higher than values reported in literature for MV grids. GRID irradiation and hemi-irradiation delayed tumor growth, but neither was as effective as conventional whole tumor uniform dose treatment. Single fraction GRID therapy could not initiate an anti-cancer immune response strong enough to match conventional RT outcomes, but follow-up studies will evaluate the combination of mini-GRID with immune checkpoint blockade., (© 2022 Institute of Physics and Engineering in Medicine.)- Published
- 2022
- Full Text
- View/download PDF
11. Detection of Lung Nodules in Micro-CT Imaging Using Deep Learning.
- Author
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Holbrook MD, Clark DP, Patel R, Qi Y, Bassil AM, Mowery YM, and Badea CT
- Subjects
- Animals, Lung, Mice, Neural Networks, Computer, X-Ray Microtomography, Deep Learning, Lung Neoplasms diagnostic imaging
- Abstract
We are developing imaging methods for a co-clinical trial investigating synergy between immunotherapy and radiotherapy. We perform longitudinal micro-computed tomography (micro-CT) of mice to detect lung metastasis after treatment. This work explores deep learning (DL) as a fast approach for automated lung nodule detection. We used data from control mice both with and without primary lung tumors. To augment the number of training sets, we have simulated data using real augmented tumors inserted into micro-CT scans. We employed a convolutional neural network (CNN), trained with four competing types of training data: (1) simulated only, (2) real only, (3) simulated and real, and (4) pretraining on simulated followed with real data. We evaluated our model performance using precision and recall curves, as well as receiver operating curves (ROC) and their area under the curve (AUC). The AUC appears to be almost identical (0.76-0.77) for all four cases. However, the combination of real and synthetic data was shown to improve precision by 8%. Smaller tumors have lower rates of detection than larger ones, with networks trained on real data showing better performance. Our work suggests that DL is a promising approach for fast and relatively accurate detection of lung tumors in mice.
- Published
- 2021
- Full Text
- View/download PDF
12. Ex Vivo MR Histology and Cytometric Feature Mapping Connect Three-dimensional in Vivo MR Images to Two-dimensional Histopathologic Images of Murine Sarcomas.
- Author
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Blocker SJ, Cook J, Mowery YM, Everitt JI, Qi Y, Hornburg KJ, Cofer GP, Zapata F, Bassil AM, Badea CT, Kirsch DG, and Johnson GA
- Subjects
- Animals, Histological Techniques, Imaging, Three-Dimensional, Mice, Pilot Projects, Magnetic Resonance Imaging, Sarcoma diagnostic imaging
- Abstract
Purpose To establish a platform for quantitative tissue-based interpretation of cytoarchitecture features from tumor MRI measurements. Materials and Methods In a pilot preclinical study, multicontrast in vivo MRI of murine soft-tissue sarcomas in 10 mice, followed by ex vivo MRI of fixed tissues (termed MR histology ), was performed. Paraffin-embedded limb cross-sections were stained with hematoxylin-eosin, digitized, and registered with MRI. Registration was assessed by using binarized tumor maps and Dice similarity coefficients (DSCs). Quantitative cytometric feature maps from histologic slides were derived by using nuclear segmentation and compared with registered MRI, including apparent diffusion coefficients and transverse relaxation times as affected by magnetic field heterogeneity (T2* maps). Cytometric features were compared with each MR image individually by using simple linear regression analysis to identify the features of interest, and the goodness of fit was assessed on the basis of R
2 values. Results Registration of MR images to histopathologic slide images resulted in mean DSCs of 0.912 for ex vivo MR histology and 0.881 for in vivo MRI. Triplicate repeats showed high registration repeatability (mean DSC, >0.9). Whole-slide nuclear segmentations were automated to detect nuclei on histopathologic slides (DSC = 0.8), and feature maps were generated for correlative analysis with MR images. Notable trends were observed between cell density and in vivo apparent diffusion coefficients (best line fit: R2 = 0.96, P < .001). Multiple cytoarchitectural features exhibited linear relationships with in vivo T2* maps, including nuclear circularity (best line fit: R2 = 0.99, P < .001) and variance in nuclear circularity (best line fit: R2 = 0.98, P < .001). Conclusion An infrastructure for registering and quantitatively comparing in vivo tumor MRI with traditional histologic analysis was successfully implemented in a preclinical pilot study of soft-tissue sarcomas. Keywords: MRI, Pathology, Animal Studies, Tissue Characterization Supplemental material is available for this article. © RSNA, 2021.- Published
- 2021
- Full Text
- View/download PDF
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