Artificial intelligence in healthcare KH Yu, AL Beam, IS Kohane Nature biomedical engineering 2 (10), 719-731, 2018 | 2279 | 2018 |
Big data and machine learning in health care AL Beam, IS Kohane Jama 319 (13), 1317-1318, 2018 | 1635 | 2018 |
Adversarial attacks on medical machine learning SG Finlayson, JD Bowers, J Ito, JL Zittrain, AL Beam, IS Kohane Science 363 (6433), 1287-1289, 2019 | 881 | 2019 |
Reporting guidelines for clinical trial reports for interventions involving artificial intelligence: the CONSORT-AI extension X Liu, SC Rivera, D Moher, MJ Calvert, AK Denniston bmj 370, 2020 | 863* | 2020 |
Guidelines for clinical trial protocols for interventions involving artificial intelligence: the SPIRIT-AI extension S Cruz Rivera, X Liu, AW Chan, AK Denniston, MJ Calvert Nature medicine 26 (9), 1351-1363, 2020 | 701* | 2020 |
The false hope of current approaches to explainable artificial intelligence in health care M Ghassemi, L Oakden-Rayner, AL Beam The Lancet Digital Health 3 (11), e745-e750, 2021 | 694 | 2021 |
Postsurgical prescriptions for opioid naive patients and association with overdose and misuse: retrospective cohort study GA Brat, D Agniel, A Beam, B Yorkgitis, M Bicket, M Homer, KP Fox, ... Bmj 360, 2018 | 603 | 2018 |
Protocol for development of a reporting guideline (TRIPOD-AI) and risk of bias tool (PROBAST-AI) for diagnostic and prognostic prediction model studies based on artificial … GS Collins, P Dhiman, CLA Navarro, J Ma, L Hooft, JB Reitsma, P Logullo, ... BMJ open 11 (7), e048008, 2021 | 445 | 2021 |
A review of challenges and opportunities in machine learning for health M Ghassemi, T Naumann, P Schulam, AL Beam, IY Chen, R Ranganath AMIA Summits on Translational Science Proceedings 2020, 191, 2020 | 406* | 2020 |
Artificial intelligence in health care: The hope, the hype, the promise, the peril M Matheny, ST Israni, M Ahmed, D Whicher Washington, DC: National Academy of Medicine 10, 2019 | 360 | 2019 |
Zebrafish developmental screening of the ToxCast™ Phase I chemical library S Padilla, D Corum, B Padnos, DL Hunter, A Beam, KA Houck, N Sipes, ... Reproductive toxicology 33 (2), 174-187, 2012 | 332 | 2012 |
Second opinion needed: communicating uncertainty in medical machine learning B Kompa, J Snoek, AL Beam npj Digital Medicine 4 (1), 1-6, 2021 | 288 | 2021 |
Challenges to the reproducibility of machine learning models in health care AL Beam, AK Manrai, M Ghassemi Jama 323 (4), 305-306, 2020 | 287 | 2020 |
Adversarial attacks against medical deep learning systems SG Finlayson, HW Chung, IS Kohane, Beam, A.L. arXiv preprint arXiv:1804.05296, 2018, 2019 | 285* | 2019 |
Reporting guideline for the early stage clinical evaluation of decision support systems driven by artificial intelligence: DECIDE-AI B Vasey, M Nagendran, B Campbell, DA Clifton, GS Collins, S Denaxas, ... bmj 377, 2022 | 282 | 2022 |
Translating artificial intelligence into clinical care AL Beam, IS Kohane Jama 316 (22), 2368-2369, 2016 | 258 | 2016 |
Clinical concept embeddings learned from massive sources of multimodal medical data AL Beam, B Kompa, A Schmaltz, I Fried, G Weber, N Palmer, X Shi, T Cai, ... Pacific Symposium on Biocomputing 2020, 295-306, 2019 | 240 | 2019 |
Illuminating protein space with a programmable generative model JB Ingraham, M Baranov, Z Costello, KW Barber, W Wang, A Ismail, ... Nature 623 (7989), 1070-1078, 2023 | 201 | 2023 |
Time to reality check the promises of machine learning-powered precision medicine J Wilkinson, KF Arnold, EJ Murray, M van Smeden, K Carr, R Sippy, ... The Lancet Digital Health 2 (12), e677-e680, 2020 | 200 | 2020 |
Estimates of healthcare spending for preterm and low-birthweight infants in a commercially insured population: 2008–2016 AL Beam, I Fried, N Palmer, D Agniel, G Brat, K Fox, I Kohane, A Sinaiko, ... Journal of Perinatology 40 (7), 1091-1099, 2020 | 142 | 2020 |