Department of Neurology, Guangdong Second Provincial General Hospital, Guangzhou, Guangdong, China.
Jinan University Faculty of Medical Science, Guangzhou, Guangdong, China.
Soc Psychiatry Psychiatr Epidemiol. 2024 Jun;59(6):1029-1037. doi: 10.1007/s00127-023-02572-3. Epub 2023 Oct 13.
Early identification of high-risk patients with Major depressive disorder (MDD) having suicide attempts (SAs) is essential for timely targeted and tailored psychological interventions and medications. This study aimed to develop and validate a web-based dynamic nomogram as a personalized predictor of SA in MDD patients. A dynamic nomogram was developed using data collected from 1718 patients in China. The dynamic model was established based on a machine learning-based regression technique in the training cohort. We validated the nomogram internally using 1000 bootstrap replications. The nomogram performance was assessed using estimates of discrimination (via the concordance index) and calibration (calibration plots). The nomogram incorporated five predictors, including Hamilton anxiety rating scale (odds ratio [OR]: 1.255), marital status (OR: 0.618), clinical global impressions (OR: 2.242), anti-thyroid peroxidase antibodies (OR: 1.002), and systolic pressure levels (OR: 1.037). The model demonstrated good overall discrimination (Harrell's C-index = 0.823). Using decision curve analysis, this model also demonstrated good clinical applicability. An online web server was constructed ( https://odywong.shinyapps.io/PRSM/ ) to facilitate the use of the nomogram. Based on these results, our study developed a nomogram to predict SA in MDD patients. The application of this nomogram may help for patients and clinicians to make decisions.
早期识别有自杀企图(SA)的重度抑郁症(MDD)高危患者对于及时进行有针对性和量身定制的心理干预和药物治疗至关重要。本研究旨在开发和验证一种基于网络的动态列线图,作为 MDD 患者 SA 的个性化预测指标。使用来自中国 1718 名患者的数据开发了一个动态列线图。动态模型是基于机器学习回归技术在训练队列中建立的。我们使用 1000 次自举复制对内进行了验证。使用判别(通过一致性指数)和校准(校准图)的估计来评估列线图的性能。该列线图纳入了五个预测因子,包括汉密尔顿焦虑量表评分(比值比 [OR]:1.255)、婚姻状况(OR:0.618)、临床总体印象(OR:2.242)、抗甲状腺过氧化物酶抗体(OR:1.002)和收缩压水平(OR:1.037)。该模型显示出良好的总体判别能力(哈雷尔 C 指数=0.823)。通过决策曲线分析,该模型还显示出良好的临床适用性。我们构建了一个在线网络服务器(https://odywong.shinyapps.io/PRSM/)以方便使用该列线图。基于这些结果,我们的研究开发了一个用于预测 MDD 患者 SA 的列线图。该列线图的应用可能有助于患者和临床医生做出决策。