Kristensen Tina D, Mager Fabian M, Ambrosen Karen S, Barber Anita D, Lemvigh Cecilie K, Bojesen Kirsten B, Nielsen Mette Ø, Fagerlund Birgitte, Glenthøj Birte Y, Syeda Warda T, Glenthøj Louise B, Ebdrup Bjørn H
Center for Neuropsychiatric Schizophrenia Research and Center for Clinical Intervention and Neuropsychiatric Schizophrenia Research, Mental Health Centre Glostrup, Copenhagen University Hospital, Glostrup, Denmark.
Center for Neuropsychiatric Schizophrenia Research and Center for Clinical Intervention and Neuropsychiatric Schizophrenia Research, Mental Health Centre Glostrup, Copenhagen University Hospital, Glostrup, Denmark; DTU Compute, Department of Applied Mathematics and Computer Science, Technical University of Denmark, Kgs. Lyngby, Denmark.
Psychiatry Res. 2024 Dec;342:116168. doi: 10.1016/j.psychres.2024.116168. Epub 2024 Sep 11.
Cognitive impairments are core features in individuals across the psychosis continuum and predict functional outcomes. Nevertheless, substantial variability in cognitive functioning within diagnostic groups, along with considerable overlap with healthy controls, hampers the translation of research findings into personalized treatment planning. Aligned with precision medicine, we employed a data driven machine learning method, self-organizing maps, to conduct transdiagnostic clustering based on cognitive functions in a sample comprising 228 healthy controls, 200 individuals at ultra-high risk for psychosis, and 98 antipsychotic-naïve patients with first-episode psychosis. The self-organizing maps revealed six clinically distinct cognitive profiles that significantly predicted baseline functional level and changes in functional level after one year. Cognitive flexibility in particular, as well as specific executive functions emerged as cardinal in differentiating the profiles. The application of self-organizing maps appears to be a promising approach to inform clinical decision-making based on individualized cognitive profiles, including patient allocation to different interventions. Moreover, this method has the potential to enable cross-diagnostic stratification in research trials, utilizing data-driven subgrouping informed by categories from underlying dimensions of cognition rather than from clinical diagnoses. Finally, the method enables cross-diagnostic profiling across other data modalities, such as brain networks or metabolic subtypes.
认知障碍是精神病连续体中个体的核心特征,并可预测功能结局。然而,诊断组内认知功能存在显著差异,且与健康对照有相当程度的重叠,这阻碍了将研究结果转化为个性化治疗方案。与精准医学相一致,我们采用了一种数据驱动的机器学习方法——自组织映射,基于认知功能对一个包含228名健康对照、200名精神病超高风险个体和98名首次发作精神病且未使用过抗精神病药物的患者的样本进行跨诊断聚类。自组织映射揭示了六种临床上不同的认知概况,这些概况显著预测了基线功能水平和一年后的功能水平变化。特别是认知灵活性以及特定的执行功能在区分这些概况时最为关键。自组织映射的应用似乎是一种很有前景的方法,可基于个体认知概况为临床决策提供信息,包括将患者分配到不同的干预措施。此外,这种方法有可能在研究试验中实现跨诊断分层,利用由认知潜在维度的类别而非临床诊断所提供的数据驱动亚组划分。最后,该方法能够跨其他数据模式进行跨诊断概况分析,如脑网络或代谢亚型。