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使用智能手机应用程序和深度学习方法预测青少年抑郁症的诊断和治疗反应:可用性研究

Prediction of Diagnosis and Treatment Response in Adolescents With Depression by Using a Smartphone App and Deep Learning Approaches: Usability Study.

作者信息

Kim Jae Sung, Wang Bohyun, Kim Meelim, Lee Jung, Kim Hyungjun, Roh Danyeul, Lee Kyung Hwa, Hong Soon-Beom, Lim Joon Shik, Kim Jae-Won, Ryan Neal

机构信息

Department of Psychiatry, Seoul National University Hospital, Seoul, Republic of Korea.

Department of Computer Science, Gachon University, Seongnam, Republic of Korea.

出版信息

JMIR Form Res. 2023 May 24;7:e45991. doi: 10.2196/45991.

Abstract

BACKGROUND

Lack of quantifiable biomarkers is a major obstacle in diagnosing and treating depression. In adolescents, increasing suicidality during antidepressant treatment further complicates the problem.

OBJECTIVE

We sought to evaluate digital biomarkers for the diagnosis and treatment response of depression in adolescents through a newly developed smartphone app.

METHODS

We developed the Smart Healthcare System for Teens At Risk for Depression and Suicide app for Android-based smartphones. This app passively collected data reflecting the social and behavioral activities of adolescents, such as their smartphone usage time, physical movement distance, and the number of phone calls and text messages during the study period. Our study consisted of 24 adolescents (mean age 15.4 [SD 1.4] years, 17 girls) with major depressive disorder (MDD) diagnosed with Kiddie Schedule for Affective Disorders and Schizophrenia for School-Age Children-Present and Lifetime Version and 10 healthy controls (mean age 13.8 [SD 0.6] years, 5 girls). After 1 week's baseline data collection, adolescents with MDD were treated with escitalopram in an 8-week, open-label trial. Participants were monitored for 5 weeks, including the baseline data collection period. Their psychiatric status was measured every week. Depression severity was measured using the Children's Depression Rating Scale-Revised and Clinical Global Impressions-Severity. The Columbia Suicide Severity Rating Scale was administered in order to assess suicide severity. We applied the deep learning approach for the analysis of the data. Deep neural network was employed for diagnosis classification, and neural network with weighted fuzzy membership functions was used for feature selection.

RESULTS

We could predict the diagnosis of depression with training accuracy of 96.3% and 3-fold validation accuracy of 77%. Of the 24 adolescents with MDD, 10 responded to antidepressant treatments. We predicted the treatment response of adolescents with MDD with training accuracy of 94.2% and 3-fold validation accuracy of 76%. Adolescents with MDD tended to move longer distances and use smartphones for longer periods of time compared to controls. The deep learning analysis showed that smartphone usage time was the most important feature in distinguishing adolescents with MDD from controls. Prominent differences were not observed in the pattern of each feature between the treatment responders and nonresponders. The deep learning analysis revealed that the total length of calls received as the most important feature predicting antidepressant response in adolescents with MDD.

CONCLUSIONS

Our smartphone app demonstrated preliminary evidence of predicting diagnosis and treatment response in depressed adolescents. This is the first study to predict the treatment response of adolescents with MDD by examining smartphone-based objective data with deep learning approaches.

摘要

背景

缺乏可量化的生物标志物是抑郁症诊断和治疗的主要障碍。在青少年中,抗抑郁治疗期间自杀倾向增加使问题更加复杂。

目的

我们试图通过一款新开发的智能手机应用程序评估青少年抑郁症诊断和治疗反应的数字生物标志物。

方法

我们为基于安卓系统的智能手机开发了“青少年抑郁和自杀风险智能医疗系统”应用程序。该应用程序在研究期间被动收集反映青少年社交和行为活动的数据,如智能手机使用时间、身体移动距离以及通话和短信数量。我们的研究包括24名被诊断为患有儿童情感障碍和精神分裂症评定量表(适用于学龄儿童 - 当前和终生版)的重度抑郁症(MDD)青少年(平均年龄15.4 [标准差1.4]岁,17名女孩)和10名健康对照者(平均年龄13.8 [标准差0.6]岁,5名女孩)。在进行1周的基线数据收集后,患有MDD的青少年在为期8周的开放标签试验中接受艾司西酞普兰治疗。对参与者进行5周的监测,包括基线数据收集期。每周测量他们的精神状态。使用儿童抑郁评定量表修订版和临床总体印象 - 严重程度来测量抑郁严重程度。应用哥伦比亚自杀严重程度评定量表来评估自杀严重程度。我们应用深度学习方法对数据进行分析。使用深度神经网络进行诊断分类,使用具有加权模糊隶属函数的神经网络进行特征选择。

结果

我们能够以96.3%的训练准确率和77%的3倍交叉验证准确率预测抑郁症诊断。在24名患有MDD的青少年中,10名对抗抑郁治疗有反应。我们以94.2%的训练准确率和76%的3倍交叉验证准确率预测患有MDD的青少年的治疗反应。与对照组相比,患有MDD的青少年往往移动距离更长且使用智能手机的时间更长。深度学习分析表明,智能手机使用时间是区分患有MDD的青少年与对照组的最重要特征。在治疗反应者和无反应者之间,各特征模式未观察到显著差异。深度学习分析显示,接收到的通话总时长是预测患有MDD的青少年抗抑郁反应的最重要特征。

结论

我们的智能手机应用程序展示了预测抑郁症青少年诊断和治疗反应的初步证据。这是第一项通过深度学习方法检查基于智能手机的客观数据来预测患有MDD的青少年治疗反应的研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2a5d/10248781/59d253497e18/formative_v7i1e45991_fig1.jpg

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