萧条(经济学)
鉴别诊断
领域(数学分析)
医学
非典型忧郁症
精神科
心理学
病理
认知
数学
经济
宏观经济学
数学分析
作者
Jinkun Zeng,Yaoyun Zhang,Yu‐Tao Xiang,Sugai Liang,Chuang Xue,Junhang Zhang,Ya Ran,Minne Cao,Fei Huang,Songfang Huang,Wei Deng,Tao Li
标识
DOI:10.1038/s44184-023-00024-z
摘要
Abstract There is a lack of objective features for the differential diagnosis of unipolar and bipolar depression, especially those that are readily available in practical settings. We investigated whether clinical features of disease course, biomarkers from complete blood count, and blood biochemical markers could accurately classify unipolar and bipolar depression using machine learning methods. This retrospective study included 1160 eligible patients (918 with unipolar depression and 242 with bipolar depression). Patient data were randomly split into training (85%) and open test (15%) sets 1000 times, and the average performance was reported. XGBoost achieved the optimal open-test performance using selected biomarkers and clinical features—AUC 0.889, sensitivity 0.831, specificity 0.839, and accuracy 0.863. The importance of features for differential diagnosis was measured using SHapley Additive exPlanations (SHAP) values. The most informative features include (1) clinical features of disease duration and age of onset, (2) biochemical markers of albumin, low density lipoprotein (LDL), and potassium, and (3) complete blood count-derived biomarkers of white blood cell count (WBC), platelet-to-lymphocyte ratio (PLR), and monocytes (MONO). Overall, onset features and hematologic biomarkers appear to be reliable information that can be readily obtained in clinical settings to facilitate the differential diagnosis of unipolar and bipolar depression.
科研通智能强力驱动
Strongly Powered by AbleSci AI