Division of Mood Disorders, Shanghai Mental Health Center, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Division of Mood Disorders, Shanghai Mental Health Center, Shanghai Jiao Tong University School of Medicine, Shanghai, China; Shanghai Key Laboratory of Psychotic Disorders, Shanghai, China.
J Affect Disord. 2020 Jan 1;260:349-360. doi: 10.1016/j.jad.2019.09.030. Epub 2019 Sep 4.
Symptomatology differences of major depressive disorder (MDD) in psychiatric and general hospitals in China leads to possible misdiagnosis. Looking at the symptomatology of first-visit patients with MDD in different mental health services, and identifying predictors of health-seeking behavior using machine learning may help to improve diagnostic accuracy.
1500 patients first diagnosed with MDD were recruited from 16 psychiatric hospitals and 16 general hospitals across China. Socio-demographic characteristics, causal attribution, symptoms of depression within and outside Diagnostic and Statistical Manual of Mental Disorders (DSM) framework were collected using a self-made questionnaire. A predictive model of 62 variables was established using Random forest, symptom frequencies of patients in general hospitals and psychiatric hospitals were compared.
The machine learning approach revealed that symptoms were strong predictors of health-seeking behavior among patients with MDD. General hospitals patients had higher frequencies of suicidal ideation (χ=15.230, p<0.001), psychosis (χ=14.264, p<0.001), weight change (all p<0.001), hypersomnia (χ=25.940, p<0.001), and a tendency of denying emotional/cognitive symptoms compared with psychiatric hospitals patients.
Stigma and preference bias were not measured. Severity of current depressive episodes was not assessed. Data of previous episode(s) was not presented.
Symptom evaluation targeting specific patient population in different hospitals is crucial for diagnostic accuracy. Suicide prevention reliant on collaboration between general hospitals and psychiatric hospitals is required in the future construction of Chinese mental health system.
中国精神病医院和综合医院的重性抑郁障碍(MDD)症状差异导致可能误诊。观察不同精神卫生服务中首次就诊 MDD 患者的症状,并使用机器学习识别求诊行为的预测因素,可能有助于提高诊断准确性。
从中国 16 家精神病医院和 16 家综合医院招募了 1500 名首次被诊断为 MDD 的患者。使用自制问卷收集人口统计学特征、因果归因、DSM 框架内外的抑郁症状。使用随机森林建立了一个包含 62 个变量的预测模型,比较了综合医院和精神病医院患者的症状频率。
机器学习方法表明,症状是 MDD 患者求诊行为的有力预测因素。综合医院患者自杀意念(χ=15.230,p<0.001)、精神病性症状(χ=14.264,p<0.001)、体重变化(均 p<0.001)、嗜睡(χ=25.940,p<0.001)的发生率较高,且与精神病医院患者相比,更倾向于否认情绪/认知症状。
未测量耻辱感和偏好偏差。未评估当前抑郁发作的严重程度。未呈现既往发作的数据。
针对不同医院特定患者群体的症状评估对诊断准确性至关重要。未来需要在构建中国精神卫生体系时,依赖综合医院和精神病医院之间的合作来预防自杀。