关注
Bradley J Erickson
Bradley J Erickson
Professor of Radiology, Mayo Clinic
在 mayo.edu 的电子邮件经过验证 - 首页
标题
引用次数
引用次数
年份
Machine learning for medical imaging
BJ Erickson, P Korfiatis, Z Akkus, TL Kline
radiographics 37 (2), 505-515, 2017
16172017
Deep learning for brain MRI segmentation: state of the art and future directions
Z Akkus, A Galimzianova, A Hoogi, DL Rubin, BJ Erickson
Journal of digital imaging 30, 449-459, 2017
11512017
An artificial intelligence-enabled ECG algorithm for the identification of patients with atrial fibrillation during sinus rhythm: a retrospective analysis of outcome prediction
ZI Attia, PA Noseworthy, F Lopez-Jimenez, SJ Asirvatham, AJ Deshmukh, ...
The Lancet 394 (10201), 861-867, 2019
11502019
Association between pathological and MRI findings in multiple sclerosis
M Filippi, W Brück, D Chard, F Fazekas, JJG Geurts, C Enzinger, ...
The Lancet Neurology 18 (2), 198-210, 2019
6932019
Consensus recommendations for a standardized Brain Tumor Imaging Protocol in clinical trials
BM Ellingson, M Bendszus, J Boxerman, D Barboriak, BJ Erickson, ...
Neuro-oncology 17 (9), 1188-1198, 2015
6672015
Imaging classification of autosomal dominant polycystic kidney disease: a simple model for selecting patients for clinical trials
MV Irazabal, LJ Rangel, EJ Bergstralh, SL Osborn, AJ Harmon, ...
Journal of the American Society of Nephrology 26 (1), 160-172, 2015
6352015
Clinical and radiographic spectrum of pathologically confirmed tumefactive multiple sclerosis
CF Lucchinetti, RH Gavrilova, I Metz, JE Parisi, BW Scheithauer, ...
Brain 131 (7), 1759-1775, 2008
5332008
Association of maximal extent of resection of contrast-enhanced and non–contrast-enhanced tumor with survival within molecular subgroups of patients with newly diagnosed …
AM Molinaro, S Hervey-Jumper, RA Morshed, J Young, SJ Han, ...
JAMA oncology 6 (4), 495-503, 2020
4402020
The RSNA pediatric bone age machine learning challenge
SS Halabi, LM Prevedello, J Kalpathy-Cramer, AB Mamonov, A Bilbily, ...
Radiology 290 (2), 498-503, 2019
3992019
The effects of changes in utilization and technological advancements of cross-sectional imaging on radiologist workload
RJ McDonald, KM Schwartz, LJ Eckel, FE Diehn, CH Hunt, BJ Bartholmai, ...
Academic radiology 22 (9), 1191-1198, 2015
3852015
Initial clinical experience in MR imaging of the brain with a fast fluid-attenuated inversion-recovery pulse sequence.
JN Rydberg, CA Hammond, RC Grimm, BJ Erickson, CR Jack Jr, ...
Radiology 193 (1), 173-180, 1994
3781994
A roadmap for foundational research on artificial intelligence in medical imaging: from the 2018 NIH/RSNA/ACR/The Academy Workshop
CP Langlotz, B Allen, BJ Erickson, J Kalpathy-Cramer, K Bigelow, ...
Radiology 291 (3), 781-791, 2019
3492019
Phase II trial of procarbazine, lomustine, and vincristine as initial therapy for patients with low-grade oligodendroglioma or oligoastrocytoma: efficacy and associations with …
JC Buckner, D Gesme Jr, JR O’Fallon, JE Hammack, S Stafford, ...
Journal of clinical oncology 21 (2), 251-255, 2003
3112003
Automated abdominal segmentation of CT scans for body composition analysis using deep learning
AD Weston, P Korfiatis, TL Kline, KA Philbrick, P Kostandy, T Sakinis, ...
Radiology 290 (3), 669-679, 2019
3022019
A survey of deep-learning applications in ultrasound: Artificial intelligence–powered ultrasound for improving clinical workflow
Z Akkus, J Cai, A Boonrod, A Zeinoddini, AD Weston, KA Philbrick, ...
Journal of the American College of Radiology 16 (9), 1318-1328, 2019
2342019
Predicting deletion of chromosomal arms 1p/19q in low-grade gliomas from MR images using machine intelligence
Z Akkus, I Ali, J Sedlář, JP Agrawal, IF Parney, C Giannini, BJ Erickson
Journal of digital imaging 30, 469-476, 2017
2132017
Beneficial plasma exchange response in central nervous system inflammatory demyelination
SM Magaña, BM Keegan, BG Weinshenker, BJ Erickson, SJ Pittock, ...
Archives of Neurology 68 (7), 870-878, 2011
2112011
FLAIR histogram segmentation for measurement of leukoaraiosis volume
CR Jack Jr, PC O'Brien, DW Rettman, MM Shiung, Y Xu, R Muthupillai, ...
Journal of Magnetic Resonance Imaging: An Official Journal of the …, 2001
2052001
Toolkits and libraries for deep learning
BJ Erickson, P Korfiatis, Z Akkus, T Kline, K Philbrick
Journal of digital imaging 30, 400-405, 2017
2012017
Residual deep convolutional neural network predicts MGMT methylation status
P Korfiatis, TL Kline, DH Lachance, IF Parney, JC Buckner, BJ Erickson
Journal of digital imaging 30, 622-628, 2017
1972017
系统目前无法执行此操作,请稍后再试。
文章 1–20