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机器学习能否作为初级保健中抑郁症的筛查工具?

Can machine learning be useful as a screening tool for depression in primary care?

作者信息

Souza Filho Erito Marques de, Veiga Rey Helena Cramer, Frajtag Rose Mary, Arrowsmith Cook Daniela Matos, Dalbonio de Carvalho Lucas Nunes, Pinho Ribeiro Antonio Luiz, Amaral Jorge

机构信息

Universidade Federal Rural do Rio de Janeiro, Rio de Janeiro, Brazil; Universidade do Estado do Rio de Janeiro, Rio de Janeiro, Brazil.

Instituto Nacional de Cardiologia, Rio de Janeiro, Brazil.

出版信息

J Psychiatr Res. 2021 Jan;132:1-6. doi: 10.1016/j.jpsychires.2020.09.025. Epub 2020 Sep 30.

DOI:10.1016/j.jpsychires.2020.09.025
PMID:33035759
Abstract

Depression is a widespread disease with a high economic burden and a complex pathophysiology disease that is still not wholly clarified, not to mention it usually is associated as a risk factor for absenteeism at work and suicide. Just 50% of patients with depression are diagnosed in primary care, and only 15% receive treatment. Stigmatization, the coexistence of somatic symptoms, and the need to remember signs in the past two weeks can contribute to explaining this situation. In this context, tools that can serve as diagnostic screening are of great value, as they can reduce the number of undiagnosed patients. Besides, Artificial Intelligence (AI) has enabled several fruitful applications in medicine, particularly in psychiatry. This study aims to evaluate the performance of Machine Learning (ML) algorithms in the detection of depressive patients from the clinical, laboratory, and sociodemographic data obtained from the Brazilian National Network for Research on Cardiovascular Diseases from June 2016 to July 2018. The results obtained are promising. In one of them, Random Forests, the accuracy, sensibility, and area under the receiver operating characteristic curve were, respectively, 0.89, 0.90, and 0.87.

摘要

抑郁症是一种广泛存在的疾病,经济负担沉重,病理生理学复杂,尚未完全阐明,更不用说它通常还与工作缺勤和自杀的风险因素相关。仅有50%的抑郁症患者在初级保健中得到诊断,只有15%的患者接受治疗。污名化、躯体症状的共存以及需要记住过去两周的症状,这些因素有助于解释这种情况。在此背景下,可作为诊断筛查的工具具有重要价值,因为它们可以减少未被诊断患者的数量。此外,人工智能(AI)已在医学领域实现了多项卓有成效的应用,尤其是在精神病学方面。本研究旨在评估机器学习(ML)算法从2016年6月至2018年7月从巴西国家心血管疾病研究网络获得的临床、实验室和社会人口统计学数据中检测抑郁症患者的性能。所获得的结果很有前景。其中一种算法,随机森林,其准确率、敏感性和受试者工作特征曲线下面积分别为0.89、0.90和0.87。

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