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Rakesh Shiradkar
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Radiomic features from pretreatment biparametric MRI predict prostate cancer biochemical recurrence: preliminary findings
R Shiradkar, S Ghose, I Jambor, P Taimen, O Ettala, AS Purysko, ...
Journal of Magnetic Resonance Imaging 48 (6), 1626-1636, 2018
1452018
Radiomic features on MRI enable risk categorization of prostate cancer patients on active surveillance: Preliminary findings
A Algohary, S Viswanath, R Shiradkar, S Ghose, S Pahwa, D Moses, ...
Journal of Magnetic Resonance Imaging 48 (3), 818-828, 2018
1252018
Radiomics based targeted radiotherapy planning (Rad-TRaP): a computational framework for prostate cancer treatment planning with MRI
R Shiradkar, TK Podder, A Algohary, S Viswanath, RJ Ellis, ...
Radiation oncology 11, 1-14, 2016
952016
An integrated nomogram combining deep learning, Prostate Imaging–Reporting and Data System (PI-RADS) scoring, and clinical variables for identification of clinically …
A Hiremath, R Shiradkar, P Fu, A Mahran, AR Rastinehad, A Tewari, ...
The Lancet Digital Health 3 (7), e445-e454, 2021
762021
Combination of peri-tumoral and intra-tumoral radiomic features on bi-parametric MRI accurately stratifies prostate cancer risk: a multi-site study
A Algohary, R Shiradkar, S Pahwa, A Purysko, S Verma, D Moses, ...
Cancers 12 (8), 2200, 2020
682020
A novel imaging based Nomogram for predicting post-surgical biochemical recurrence and adverse pathology of prostate cancer from pre-operative bi-parametric MRI
L Li, R Shiradkar, P Leo, A Algohary, P Fu, SH Tirumani, A Mahran, ...
EBioMedicine 63, 2021
452021
Repeatability of radiomics and machine learning for DWI: Short‐term repeatability study of 112 patients with prostate cancer
H Merisaari, P Taimen, R Shiradkar, O Ettala, M Pesola, J Saunavaara, ...
Magnetic resonance in medicine 83 (6), 2293-2309, 2020
402020
Integrating pathomics with radiomics and genomics for cancer prognosis: A brief review
C Lu, R Shiradkar, Z Liu
Chinese Journal of Cancer Research 33 (5), 563, 2021
332021
T1 and T2 MR fingerprinting measurements of prostate cancer and prostatitis correlate with deep learning–derived estimates of epithelium, lumen, and stromal composition on …
R Shiradkar, A Panda, P Leo, A Janowczyk, X Farre, N Janaki, L Li, ...
European radiology 31, 1336-1346, 2021
322021
“Shortcuts” causing bias in radiology artificial intelligence: causes, evaluation and mitigation.
I Banerjee, K Bhattacharjee, JL Burns, H Trivedi, S Purkayastha, ...
Journal of the American College of Radiology, 2023
292023
Test-retest repeatability of a deep learning architecture in detecting and segmenting clinically significant prostate cancer on apparent diffusion coefficient (ADC) maps
A Hiremath, R Shiradkar, H Merisaari, P Prasanna, O Ettala, P Taimen, ...
European radiology 31, 379-391, 2021
212021
Computer extracted gland features from H&E predicts prostate cancer recurrence comparably to a genomic companion diagnostic test: a large multi-site study
P Leo, A Janowczyk, R Elliott, N Janaki, K Bera, R Shiradkar, X Farré, ...
NPJ precision oncology 5 (1), 35, 2021
202021
A new perspective on material classification and ink identification
R Shiradkar, L Shen, G Landon, S Heng Ong, P Tan
Proceedings of the IEEE Conference on Computer Vision and Pattern …, 2014
162014
Prostate shapes on pre-treatment MRI between prostate cancer patients who do and do not undergo biochemical recurrence are different: preliminary findings
S Ghose, R Shiradkar, M Rusu, J Mitra, R Thawani, M Feldman, AC Gupta, ...
Scientific Reports 7 (1), 15829, 2017
142017
Prostate surface distension and tumor texture descriptors from pre-treatment MRI are associated with biochemical recurrence following radical prostatectomy: preliminary findings
R Shiradkar, S Ghose, A Mahran, L Li, I Hubbard, P Fu, SH Tirumani, ...
Frontiers in Oncology 12, 841801, 2022
132022
Ten quick tips for computational analysis of medical images
D Chicco, R Shiradkar
PLoS computational biology 19 (1), e1010778, 2023
122023
Predicting prostate cancer recurrence in pre-treatment prostate magnetic resonance imaging (MRI) with combined tumor induced organ distension and tumor radiomics
A Madabhushi, R Shiradkar, S Ghose
US Patent 10,540,570, 2020
112020
Evaluating the sensitivity of deep learning to inter-reader variations in lesion delineations on bi-parametric MRI in identifying clinically significant prostate cancer
A Roge, A Hiremath, M Sobota, SH Tirumani, LK Bittencourt, J Ream, ...
Medical imaging 2022: computer-aided diagnosis 12033, 264-273, 2022
72022
Predicting prostate cancer risk of progression with multiparametric magnetic resonance imaging using machine learning and peritumoral radiomics
A Madabhushi, A Algohary, R Shiradkar
US Patent 11,011,265, 2021
62021
Auto-calibrating photometric stereo using ring light constraints
R Shiradkar, P Tan, SH Ong
Machine vision and applications 25, 801-809, 2014
62014
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