利用多点功能磁共振成像数据推进重度抑郁症的早期检测:人工智能模型的比较分析。

JMIRx med Pub Date : 2025-07-15 DOI:10.2196/65417
Masab Mansoor, Kashif Ansari
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引用次数: 0

摘要

背景:重度抑郁障碍(MDD)是一种高度流行的精神健康状况,具有重要的公共卫生意义。早期发现对于及时干预至关重要,但目前的诊断方法往往依赖于主观的临床评估,导致诊断延迟或不准确。神经影像学和机器学习(ML)的进步为客观准确的早期检测提供了可能。目的:本研究旨在利用多位点功能磁共振成像数据建立和验证MDD早期检测的ML模型,比较其性能,并评估其临床适用性。方法:我们使用了来自3个公共数据集的1200名参与者(600名早期MDD患者和600名健康对照)的功能磁共振成像数据。总共有4个ML模型——支持向量机、随机森林、梯度增强机和深度神经网络——被训练并使用5倍交叉验证框架进行评估。评估模型的准确性、敏感性、特异性、f1评分和受试者工作特征曲线下面积。应用Shapley加性解释值和激活最大化技术解释模型预测。结果:深度神经网络模型表现出优异的性能,准确率为89% (95% CI 86%-92%),接受者工作特征曲线下面积为0.95 (95% CI 0.93-0.97),比传统诊断方法高出15%(结论:我们的研究结果突出了人工智能驱动方法在早期检测MDD方面的潜力,并对改善早期干预策略具有重要意义。虽然前景看好,但这些工具应该补充而不是取代临床专业知识,并仔细考虑患者隐私和模型偏差等伦理影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing Early Detection of Major Depressive Disorder Using Multisite Functional Magnetic Resonance Imaging Data: Comparative Analysis of AI Models.

Background: Major depressive disorder (MDD) is a highly prevalent mental health condition with significant public health implications. Early detection is crucial for timely intervention, but current diagnostic methods often rely on subjective clinical assessments, leading to delayed or inaccurate diagnoses. Advances in neuroimaging and machine learning (ML) offer the potential for objective and accurate early detection.

Objective: This study aimed to develop and validate ML models using multisite functional magnetic resonance imaging data for the early detection of MDD, compare their performance, and evaluate their clinical applicability.

Methods: We used functional magnetic resonance imaging data from 1200 participants (600 with early-stage MDD and 600 healthy controls) across 3 public datasets. In total, 4 ML models-support vector machine, random forest, gradient boosting machine, and deep neural network-were trained and evaluated using a 5-fold cross-validation framework. Models were assessed for accuracy, sensitivity, specificity, F1-score, and area under the receiver operating characteristic curve. Shapley additive explanations values and activation maximization techniques were applied to interpret model predictions.

Results: The deep neural network model demonstrated superior performance with an accuracy of 89% (95% CI 86%-92%) and an area under the receiver operating characteristic curve of 0.95 (95% CI 0.93-0.97), outperforming traditional diagnostic methods by 15% (P<.001). Key predictive features included altered functional connectivity between the dorsolateral prefrontal cortex, anterior cingulate cortex, and limbic regions. The model achieved 78% sensitivity (95% CI 71%-85%) in identifying individuals who developed MDD within a 2-year follow-up period, demonstrating good generalizability across datasets.

Conclusions: Our findings highlight the potential of artificial intelligence-driven approaches for the early detection of MDD, with implications for improving early intervention strategies. While promising, these tools should complement rather than replace clinical expertise, with careful consideration of ethical implications such as patient privacy and model biases.

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