PredictPTB:一个可解释的早产预测模型,使用基于注意的递归神经网络。

IF 4 3区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY Biodata Mining Pub Date : 2022-02-14 DOI:10.1186/s13040-022-00289-8
Rawan AlSaad, Qutaibah Malluhi, Sabri Boughorbel
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引用次数: 3

摘要

背景:早期识别有早产风险的孕妇(PTB)是婴儿死亡和发病的主要原因,具有改善产前护理的重大潜力。然而,我们缺乏有效的预测模型来准确预测肺结核,并为临床医生提供适当的解释。在这项工作中,我们引入了一个临床预测模型(PredictPTB),该模型结合了可通过电子健康记录(EHR)轻松获取的变量(医疗代码),以准确预测分娩前1、3、6和9个月的早产风险。方法:PredictPTB的体系结构采用递归神经网络(rnn)对纵向患者的电子病历就诊进行建模,利用单码级关注机制提高预测性能,同时为预测结果提供时间码级和访问级的解释。我们比较了预测时间点、数据模式和数据窗口的不同组合的性能。我们还提出了一个案例研究,说明我们的模型的可解释性,说明临床医生如何获得一些透明度的预测。结果:利用222,436例分娩的大队列,包括总共27,100个独特的临床概念,我们的模型能够预测早产,在分娩前1、3和6个月的ROC-AUC分别为0.82、0.79、0.78,PR-AUC分别为0.40、0.31、0.24。结果还证实,观察数据模式(如诊断)比介入性数据模式(如药物和程序)更能预测早产。结论:我们的研究结果表明,PredictPTB可以用于实现对早产的准确和可扩展的预测,并辅以直接突出患者EHR时间表证据的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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PredictPTB: an interpretable preterm birth prediction model using attention-based recurrent neural networks.

Background: Early identification of pregnant women at risk for preterm birth (PTB), a major cause of infant mortality and morbidity, has a significant potential to improve prenatal care. However, we lack effective predictive models which can accurately forecast PTB and complement these predictions with appropriate interpretations for clinicians. In this work, we introduce a clinical prediction model (PredictPTB) which combines variables (medical codes) readily accessible through electronic health record (EHR) to accurately predict the risk of preterm birth at 1, 3, 6, and 9 months prior to delivery.

Methods: The architecture of PredictPTB employs recurrent neural networks (RNNs) to model the longitudinal patient's EHR visits and exploits a single code-level attention mechanism to improve the predictive performance, while providing temporal code-level and visit-level explanations for the prediction results. We compare the performance of different combinations of prediction time-points, data modalities, and data windows. We also present a case-study of our model's interpretability illustrating how clinicians can gain some transparency into the predictions.

Results: Leveraging a large cohort of 222,436 deliveries, comprising a total of 27,100 unique clinical concepts, our model was able to predict preterm birth with an ROC-AUC of 0.82, 0.79, 0.78, and PR-AUC of 0.40, 0.31, 0.24, at 1, 3, and 6 months prior to delivery, respectively. Results also confirm that observational data modalities (such as diagnoses) are more predictive for preterm birth than interventional data modalities (e.g., medications and procedures).

Conclusions: Our results demonstrate that PredictPTB can be utilized to achieve accurate and scalable predictions for preterm birth, complemented by explanations that directly highlight evidence in the patient's EHR timeline.

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来源期刊
Biodata Mining
Biodata Mining MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
7.90
自引率
0.00%
发文量
28
审稿时长
23 weeks
期刊介绍: BioData Mining is an open access, open peer-reviewed journal encompassing research on all aspects of data mining applied to high-dimensional biological and biomedical data, focusing on computational aspects of knowledge discovery from large-scale genetic, transcriptomic, genomic, proteomic, and metabolomic data. Topical areas include, but are not limited to: -Development, evaluation, and application of novel data mining and machine learning algorithms. -Adaptation, evaluation, and application of traditional data mining and machine learning algorithms. -Open-source software for the application of data mining and machine learning algorithms. -Design, development and integration of databases, software and web services for the storage, management, retrieval, and analysis of data from large scale studies. -Pre-processing, post-processing, modeling, and interpretation of data mining and machine learning results for biological interpretation and knowledge discovery.
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