An Interpretable Model With Probabilistic Integrated Scoring for Mental Health Treatment Prediction: Design Study.

IF 3.1 3区 医学 Q2 MEDICAL INFORMATICS
Anthony Kelly, Esben Kjems Jensen, Eoin Martino Grua, Kim Mathiasen, Pepijn Van de Ven
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Abstract

Background: Machine learning (ML) systems in health care have the potential to enhance decision-making but often fail to address critical issues such as prediction explainability, confidence, and robustness in a context-based and easily interpretable manner.

Objective: This study aimed to design and evaluate an ML model for a future decision support system for clinical psychopathological treatment assessments. The novel ML model is inherently interpretable and transparent. It aims to enhance clinical explainability and trust through a transparent, hierarchical model structure that progresses from questions to scores to classification predictions. The model confidence and robustness were addressed by applying Monte Carlo dropout, a probabilistic method that reveals model uncertainty and confidence.

Methods: A model for clinical psychopathological treatment assessments was developed, incorporating a novel ML model structure. The model aimed at enhancing the graphical interpretation of the model outputs and addressing issues of prediction explainability, confidence, and robustness. The proposed ML model was trained and validated using patient questionnaire answers and demographics from a web-based treatment service in Denmark (N=1088).

Results: The balanced accuracy score on the test set was 0.79. The precision was ≥0.71 for all 4 prediction classes (depression, panic, social phobia, and specific phobia). The area under the curve for the 4 classes was 0.93, 0.92, 0.91, and 0.98, respectively.

Conclusions: We have demonstrated a mental health treatment ML model that supported a graphical interpretation of prediction class probability distributions. Their spread and overlap can inform clinicians of competing treatment possibilities for patients and uncertainty in treatment predictions. With the ML model achieving 79% balanced accuracy, we expect that the model will be clinically useful in both screening new patients and informing clinical interviews.

用于心理健康治疗预测的概率综合评分可解释模型:设计研究。
背景:医疗保健中的机器学习(ML)系统具有增强决策的潜力,但通常无法以基于上下文且易于解释的方式解决预测可解释性、置信度和鲁棒性等关键问题。目的:本研究旨在为临床精神病理治疗评估的决策支持系统设计和评估ML模型。新的ML模型具有固有的可解释性和透明性。它旨在通过透明的分层模型结构,从问题到分数再到分类预测,提高临床可解释性和信任度。采用蒙特卡罗dropout(一种揭示模型不确定性和置信度的概率方法)解决了模型的置信度和鲁棒性问题。方法:采用一种新颖的ML模型结构,建立临床精神病理治疗评估模型。该模型旨在增强模型输出的图形解释,并解决预测可解释性、置信度和鲁棒性的问题。使用丹麦基于网络的治疗服务(N=1088)的患者问卷答案和人口统计数据对提出的ML模型进行了训练和验证。结果:测试集的平衡准确度得分为0.79。所有4个预测类别(抑郁、恐慌、社交恐惧症和特定恐惧症)的准确率均≥0.71。4类的曲线下面积分别为0.93、0.92、0.91和0.98。结论:我们已经证明了一个支持预测类概率分布的图形化解释的心理健康治疗ML模型。它们的传播和重叠可以告知临床医生对患者的竞争治疗可能性和治疗预测的不确定性。随着ML模型达到79%的平衡准确率,我们预计该模型将在筛查新患者和告知临床访谈方面具有临床用途。
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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来源期刊
JMIR Medical Informatics
JMIR Medical Informatics Medicine-Health Informatics
CiteScore
7.90
自引率
3.10%
发文量
173
审稿时长
12 weeks
期刊介绍: JMIR Medical Informatics (JMI, ISSN 2291-9694) is a top-rated, tier A journal which focuses on clinical informatics, big data in health and health care, decision support for health professionals, electronic health records, ehealth infrastructures and implementation. It has a focus on applied, translational research, with a broad readership including clinicians, CIOs, engineers, industry and health informatics professionals. Published by JMIR Publications, publisher of the Journal of Medical Internet Research (JMIR), the leading eHealth/mHealth journal (Impact Factor 2016: 5.175), JMIR Med Inform has a slightly different scope (emphasizing more on applications for clinicians and health professionals rather than consumers/citizens, which is the focus of JMIR), publishes even faster, and also allows papers which are more technical or more formative than what would be published in the Journal of Medical Internet Research.
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