Miola Alessandro, De Prisco Michele, Lussignoli Marialaura, Meda Nicola, Dughiero Elisa, Costa Riccardo, Nunez Nicolas A, Fornaro Michele, Veldic Marin, Frye Mark A, Vieta Eduard, Solmi Marco, Radua Joaquim, Sambataro Fabio
Department of Neuroscience, University of Padova, Padua, Italy.
Department of Psychiatry and Psychology, Mayo Clinic, Rochester, MN, United States.
Front Psychiatry. 2024 Sep 3;15:1435199. doi: 10.3389/fpsyt.2024.1435199. eCollection 2024.
Bipolar Disorder (BD) is a severe mental illness associated with high rates of general medical comorbidity, reduced life expectancy, and premature mortality. Although BD has been associated with high medical hospitalization, the factors that contribute to this risk remain largely unexplored. We used baseline medical and psychiatric records to develop a supervised machine learning model to predict general medical admissions after discharge from psychiatric hospitalization.
In this retrospective three-year cohort study of 71 patients diagnosed with BD (mean age=52.19 years, females=56.33%), lasso regression models combining medical and psychiatric records, as well as those using them separately, were fitted and their predictive power was estimated using a leave-one-out cross-validation procedure.
The proportion of medical admissions in patients with BD was higher compared with age- and sex-matched hospitalizations in the same region (25.4% vs. 8.48%). The lasso model fairly accurately predicted the outcome (area under the curve [AUC]=69.5%, 95%C.I.=55-84.1; sensitivity=61.1%, specificity=75.5%, balanced accuracy=68.3%). Notably, pre-existing cardiovascular, neurological, or osteomuscular diseases collectively accounted for more than 90% of the influence on the model. The accuracy of the model based on medical records was slightly inferior (AUC=68.7%, 95%C.I. = 54.6-82.9), while that of the model based on psychiatric records only was below chance (AUC=61.8%, 95%C.I.=46.2-77.4).
Our findings support the need to monitor medical comorbidities during clinical decision-making to tailor and implement effective preventive measures in people with BD. Further research with larger sample sizes and prospective cohorts is warranted to replicate these findings and validate the predictive model.
双相情感障碍(BD)是一种严重的精神疾病,与较高的一般医疗合并症发生率、预期寿命缩短和过早死亡相关。尽管BD与较高的医疗住院率有关,但导致这种风险的因素在很大程度上仍未得到探索。我们使用基线医疗和精神科记录来开发一个监督式机器学习模型,以预测精神科住院出院后的一般医疗入院情况。
在这项对71名诊断为BD的患者进行的为期三年的回顾性队列研究中(平均年龄 = 52.19岁,女性 = 56.33%),拟合了结合医疗和精神科记录的套索回归模型以及分别使用它们的模型,并使用留一法交叉验证程序估计其预测能力。
与同一地区年龄和性别匹配的住院患者相比,BD患者的医疗入院比例更高(25.4%对8.48%)。套索模型相当准确地预测了结果(曲线下面积[AUC]=69.5%,95%置信区间 = 55 - 84.1;敏感性 = 61.1%,特异性 = 75.5%,平衡准确率 = 68.3%)。值得注意的是,既往存在的心血管、神经或肌肉骨骼疾病共同占对模型影响的90%以上。基于医疗记录的模型准确性略低(AUC = 68.7%,95%置信区间 = 54.6 - 82.9),而仅基于精神科记录的模型准确性低于随机水平(AUC = 61.8%,95%置信区间 = 46.2 - 77.4)。
我们的研究结果支持在临床决策过程中监测医疗合并症的必要性,以便为BD患者制定并实施有效的预防措施。有必要进行更大样本量和前瞻性队列的进一步研究来重复这些发现并验证预测模型。