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Big Data Analytics for Prostate RadiotherapyTracking of Mesenchymal Stem Cells with Fluorescence Endomicroscopy Imaging in Radiotherapy-Induced Lung Injury.Contrasting analytical and data-driven frameworks for radiogenomic modeling of normal tissue toxicities in prostate cancer.Outcome modeling techniques for prostate cancer radiotherapy: Data, models, and validation.Perspectives on making big data analytics work for oncology.Experimental evaluation of x-ray acoustic computed tomography for radiotherapy dosimetry applications.Heart irradiation as a risk factor for radiation pneumonitis.Predicting radiotherapy outcomes using statistical learning techniques.RTOG GU Radiation oncology specialists reach consensus on pelvic lymph node volumes for high-risk prostate cancerVariation in the gross tumor volume and clinical target volume for preoperative radiotherapy of primary large high-grade soft tissue sarcoma of the extremity among RTOG sarcoma radiation oncologists.Comparative methods for PET image segmentation in pharyngolaryngeal squamous cell carcinoma.Proton and light ion RBE for the induction of direct DNA double strand breaks.Lessons From Large-Scale Collection of Patient-Reported Outcomes: Implications for Big Data Aggregation and Analytics.A Bayesian network approach for modeling local failure in lung cancer.Radiation dose-volume effects in the brain.Variability in clinical target volume delineation for intensity modulated radiation therapy in 3 challenging cervix cancer scenarios.Modeling the risk of radiation-induced acute esophagitis for combined Washington University and RTOG trial 93-11 lung cancer patientsElective clinical target volumes for conformal therapy in anorectal cancer: a radiation therapy oncology group consensus panel contouring atlas.Computer-aided detection and diagnosis of breast cancer with mammography: recent advances.Stereotactic body radiation therapy for early-stage non-small-cell lung cancer: the pattern of failure is distant.Radiation dose-volume effects in the lung.FDG-PET-based prognostic nomograms for locally advanced cervical cancer.Radiomics strategies for risk assessment of tumour failure in head-and-neck cancer.Radiogenomics and radiotherapy response modeling.Beyond imaging: The promise of radiomics.Toward a standard for the evaluation of PET-Auto-Segmentation methods following the recommendations of AAPM task group No. 211: Requirements and implementationUnraveling biophysical interactions of radiation pneumonitis in non-small-cell lung cancer via Bayesian network analysis.Tumor control probability modeling for stereotactic body radiation therapy of early-stage lung cancer using multiple bio-physical models.A 4D biomechanical lung phantom for joint segmentation/registration evaluation.Distribution of lung tissue hysteresis during free breathing.Adaptive learning for relevance feedback: application to digital mammography.Mesenchymal Stem Cells Adopt Lung Cell Phenotype in Normal and Radiation-induced Lung Injury Conditions.Bayesian network ensemble as a multivariate strategy to predict radiation pneumonitis risk.A comparative analysis of longitudinal computed tomography and histopathology for evaluating the potential of mesenchymal stem cells in mitigating radiation-induced pulmonary fibrosis.Developing and Validating a Survival Prediction Model for NSCLC Patients Through Distributed Learning Across 3 Countries.On the consistency of Monte Carlo track structure DNA damage simulations.Exploring feature-based approaches in PET images for predicting cancer treatment outcomes.Investigation of a breathing surrogate prediction algorithm for prospective pulmonary gating.Technical note: DIRART--A software suite for deformable image registration and adaptive radiotherapy research.Technical note: deformable image registration on partially matched images for radiotherapy applications
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researcher ORCID ID = 0000-0001-6023-1132
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35472734900
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