Heo Suncheol, Yu Jae Yong, Kang Eun Ae, Shin Hyunah, Ryu Kyeongmin, Kim Chungsoo, Chegal Yebin, Jung Hyojung, Lee Suehyun, Park Rae Woong, Kim Kwangsoo, Hwangbo Yul, Lee Jae-Hyun, Park Yu Rang
Department of Biomedical Systems Informatics, Yonsei University College of Medicine, Seoul, Korea.
Medical Informatics Collaborative Unit, Department of Research Affairs, Yonsei University College of Medicine, Seoul, Korea.
Healthc Inform Res. 2023 Jul;29(3):246-255. doi: 10.4258/hir.2023.29.3.246. Epub 2023 Jul 31.
The objective of this study was to develop and validate a multicenter-based, multi-model, time-series deep learning model for predicting drug-induced liver injury (DILI) in patients taking angiotensin receptor blockers (ARBs). The study leveraged a national-level multicenter approach, utilizing electronic health records (EHRs) from six hospitals in Korea.
A retrospective cohort analysis was conducted using EHRs from six hospitals in Korea, comprising a total of 10,852 patients whose data were converted to the Common Data Model. The study assessed the incidence rate of DILI among patients taking ARBs and compared it to a control group. Temporal patterns of important variables were analyzed using an interpretable timeseries model.
The overall incidence rate of DILI among patients taking ARBs was found to be 1.09%. The incidence rates varied for each specific ARB drug and institution, with valsartan having the highest rate (1.24%) and olmesartan having the lowest rate (0.83%). The DILI prediction models showed varying performance, measured by the average area under the receiver operating characteristic curve, with telmisartan (0.93), losartan (0.92), and irbesartan (0.90) exhibiting higher classification performance. The aggregated attention scores from the models highlighted the importance of variables such as hematocrit, albumin, prothrombin time, and lymphocytes in predicting DILI.
Implementing a multicenter-based timeseries classification model provided evidence that could be valuable to clinicians regarding temporal patterns associated with DILI in ARB users. This information supports informed decisions regarding appropriate drug use and treatment strategies.
本研究的目的是开发并验证一种基于多中心、多模型的时间序列深度学习模型,用于预测服用血管紧张素受体阻滞剂(ARB)的患者发生药物性肝损伤(DILI)的情况。该研究采用国家级多中心方法,利用了韩国六家医院的电子健康记录(EHR)。
使用韩国六家医院的EHR进行回顾性队列分析,共有10852例患者的数据被转换为通用数据模型。该研究评估了服用ARB的患者中DILI的发病率,并将其与对照组进行比较。使用可解释的时间序列模型分析重要变量的时间模式。
发现服用ARB的患者中DILI的总体发病率为1.09%。每种特定ARB药物和机构的发病率各不相同,缬沙坦的发病率最高(1.24%),奥美沙坦的发病率最低(0.83%)。DILI预测模型表现各异,通过受试者操作特征曲线下的平均面积衡量,替米沙坦(0.93)、氯沙坦(0.92)和厄贝沙坦(0.90)表现出更高的分类性能。模型的综合注意力分数突出了血细胞比容、白蛋白、凝血酶原时间和淋巴细胞等变量在预测DILI中的重要性。
实施基于多中心的时间序列分类模型提供了证据,这些证据对于临床医生了解ARB使用者中与DILI相关的时间模式可能很有价值。这些信息有助于就适当的药物使用和治疗策略做出明智的决策。