Deep Learning With Electronic Health Records for Short-Term Fracture Risk Identification: Crystal Bone Algorithm Development and Validation

被引:31
作者
Almog, Yasmeen Adar [1 ]
Rai, Angshu [1 ]
Zhang, Patrick [1 ]
Moulaison, Amanda [1 ]
Powell, Ross [1 ]
Mishra, Anirban [1 ]
Weinberg, Kerry [1 ]
Hamilton, Celeste [2 ]
Oates, Mary [3 ]
McCloskey, Eugene [4 ]
Cummings, Steven R. [5 ]
机构
[1] Amgen Inc, Digital Hlth & Innovat, 1 Amgen Ctr Dr,MS 38-3B, Thousand Oaks, CA 91320 USA
[2] Amgen Inc, Global Med Operat, Thousand Oaks, CA 91320 USA
[3] Amgen Inc, US Med, Thousand Oaks, CA 91320 USA
[4] Univ Sheffield, Dept Oncol & Metab, Sheffield, S Yorkshire, England
[5] Univ Calif San Francisco, Dept Med, San Francisco, CA 94143 USA
基金
英国医学研究理事会;
关键词
fracture; bone; osteoporosis; low bone mass; prediction; natural language processing; NLP; machine learning; deep learning; artificial intelligence; AI; electronic health record; EHR; QUALITY-OF-LIFE; OSTEOPOROSIS-RELATED FRACTURES; VERTEBRAL FRACTURES; POSTMENOPAUSAL WOMEN; HIP FRACTURE; FRAGILITY FRACTURES; PARATHYROID-HORMONE; FUNCTIONAL STATUS; PHYSICAL FUNCTION; ASSESSMENT-TOOL;
D O I
10.2196/22550
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
100404 [儿少卫生与妇幼保健学];
摘要
Background: Fractures as a result of osteoporosis and low bone mass are common and give rise to significant clinical, personal, and economic burden. Even after a fracture occurs, high fracture risk remains widely underdiagnosed and undertreated. Common fracture risk assessment tools utilize a subset of clinical risk factors for prediction, and often require manual data entry. Furthermore, these tools predict risk over the long term and do not explicitly provide short-term risk estimates necessary to identify patients likely to experience a fracture in the next 1-2 years. Objective: The goal of this study was to develop and evaluate an algorithm for the identification of patients at risk of fracture in a subsequent 1- to 2-year period. In order to address the aforementioned limitations of current prediction tools, this approach focused on a short-term timeframe, automated data entry, and the use of longitudinal data to inform the predictions. Methods: Using retrospective electronic health record data from over 1,000,000 patients, we developed Crystal Bone, an algorithm that applies machine learning techniques from natural language processing to the temporal nature of patient histories to generate short-term fracture risk predictions. Similar to how language models predict the next word in a given sentence or the topic of a document, Crystal Bone predicts whether a patient's future trajectory might contain a fracture event, or whether the signature of the patient's journey is similar to that of a typical future fracture patient. A holdout set with 192,590 patients was used to validate accuracy. Experimental baseline models and human-level performance were used for comparison. Results: The model accurately predicted 1- to 2-year fracture risk for patients aged over 50 years (area under the receiver operating characteristics curve [AUROC] 0.81). These algorithms outperformed the experimental baselines (AUROC 0.67) and showed meaningful improvements when compared to retrospective approximation of human-level performance by correctly identifying 9649 of 13,765 (70%) at-risk patients who did not receive any preventative bone-health-related medical interventions from their physicians. Conclusions: These findings indicate that it is possible to use a patient's unique medical history as it changes over time to predict the risk of short-term fracture. Validating and applying such a tool within the health care system could enable automated and widespread prediction of this risk and may help with identification of patients at very high risk of fracture.
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页数:15
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