Causes of death in individuals with lifetime major depression: a comprehensive machine learning analysis from a community-based autopsy center.

IF 3.4 2区 医学 Q2 PSYCHIATRY
Paula Villela Nunes, Livia Mancine, Beatriz Astolfi Neves, Renata Elaine Paraizo Leite, Camila Nascimento, Carlos Augusto Pasqualucci, Beny Lafer, Rogerio Salvini, Claudia Kimie Suemoto
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引用次数: 0

Abstract

Background: Depression can be associated with increased mortality and morbidity, but no studies have investigated the specific causes of death based on autopsy reports. Autopsy studies can yield valuable and detailed information on pathological ailments or underreported conditions. This study aimed to compare autopsy-confirmed causes of death (CoD) between individuals diagnosed with major depressive disorder (MDD) and matched controls. We also analyzed subgroups within our MDD sample, including late-life depression and recurrent depression. We further investigated whether machine learning (ML) algorithms could distinguish MDD and each subgroup from controls based on their CoD.

Methods: We conducted a comprehensive analysis of CoD in individuals who died from nontraumatic causes. The diagnosis of lifetime MDD was ascertained based on the DSM-5 criteria using information from a structured interview with a knowledgeable informant. Eleven established ML algorithms were used to differentiate MDD individuals from controls by simultaneously analyzing different disease category groups to account for multiple tests. The McNemar test was further used to compare paired nominal data.

Results: The initial dataset included records of 1,102 individuals, among whom 232 (21.1%) had a lifetime diagnosis of MDD. Each MDD individual was strictly paired with a control non-psychiatric counterpart. In the MDD group, the most common CoD were circulatory (67.2%), respiratory (13.4%), digestive (6.0%), and cancer (5.6%). Despite employing a range of ML models, we could not find distinctive CoD patterns that could reliably distinguish individuals with MDD from individuals in the control group (average accuracy: 50.6%; accuracy range: 39-59%). These findings were consistent even when considering factors within the MDD group, such as late-life or recurrent MDD. When comparing groups with paired nominal tests, no differences were found for circulatory (p=0.450), respiratory (p=0.790), digestive (p=1.000), or cancer (p=0.855) CoD.

Conclusions: Our analysis revealed that autopsy-confirmed CoD exhibited remarkable similarity between individuals with depression and their matched controls, underscoring the existing heterogeneity in the literature. Future research should prioritize more severe manifestations of depression and larger sample sizes, particularly in the context of CoD related to cancer.

终生重度抑郁症患者的死亡原因:来自社区尸检中心的综合机器学习分析。
背景:抑郁症可能与死亡率和发病率的增加有关,但目前还没有研究根据尸检报告调查具体的死亡原因。尸检研究可提供有关病理疾病或未充分报告的情况的宝贵而详细的信息。本研究旨在比较经尸检证实的重度抑郁障碍(MDD)患者与匹配对照组的死因(CoD)。我们还分析了 MDD 样本中的亚组,包括晚期抑郁症和复发性抑郁症。我们进一步研究了机器学习(ML)算法能否根据CoD将MDD和每个亚组与对照组区分开来:我们对死于非创伤性原因的个体的 CoD 进行了全面分析。根据DSM-5标准,通过对知情者进行结构化访谈,确定了终生MDD的诊断。通过同时分析不同的疾病类别组来考虑多重检验,我们使用了 11 种已建立的 ML 算法来区分 MDD 患者和对照组。此外,还使用 McNemar 检验对配对的名义数据进行比较:初始数据集包括 1,102 人的记录,其中 232 人(21.1%)终生被诊断为 MDD。每个 MDD 患者都与非精神病对照组严格配对。在 MDD 组中,最常见的 CoD 是循环系统疾病(67.2%)、呼吸系统疾病(13.4%)、消化系统疾病(6.0%)和癌症(5.6%)。尽管我们采用了一系列 ML 模型,但仍无法找到能够可靠区分 MDD 患者和对照组患者的独特 CoD 模式(平均准确率:50.6%;准确率范围:39-59%)。即使考虑到 MDD 组内的因素,如晚期或复发性 MDD,这些发现也是一致的。用配对名义检验比较各组时,在循环系统(p=0.450)、呼吸系统(p=0.790)、消化系统(p=1.000)或癌症(p=0.855)CoD方面未发现差异:我们的分析表明,尸检证实的 CoD 在抑郁症患者及其匹配对照组之间表现出显著的相似性,凸显了文献中现有的异质性。未来的研究应优先考虑更严重的抑郁症表现和更大的样本量,尤其是与癌症相关的CoD。
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
BMC Psychiatry
BMC Psychiatry 医学-精神病学
CiteScore
5.90
自引率
4.50%
发文量
716
审稿时长
3-6 weeks
期刊介绍: BMC Psychiatry is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of psychiatric disorders, as well as related molecular genetics, pathophysiology, and epidemiology.
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