Gubics Flórián, Nagy Ádám, Dombi József, Pálfi Antónia, Szabó Zoltán, Viharos Zsolt János, Hoang Anh Tuan, Bilicki Vilmos, Szendi István
Department of Medical Genetics, Doctoral School of Interdisciplinary Medicine, University of Szeged, 6720 Szeged, Hungary.
Department of Software Engineering, University of Szeged, 6720 Szeged, Hungary.
Diagnostics (Basel). 2025 Feb 13;15(4):454. doi: 10.3390/diagnostics15040454.
: Early and accurate diagnosis is crucial for effective prevention and treatment of severe mental illnesses, such as schizophrenia and bipolar disorder. However, identifying these conditions in their early stages remains a significant challenge. Our goal was to develop a method capable of detecting latent disease liability in healthy volunteers. : Using questionnaires examining affective temperament and schizotypal traits among voluntary, healthy university students (N = 710), we created three groups. These were a group characterized by an emphasis on positive schizotypal traits (N = 20), a group showing cyclothymic temperament traits (N = 17), and a control group showing no susceptibility in either direction (N = 21). We performed a resting-state EEG examination as part of a complex psychological, electrophysiological, psychophysiological, and laboratory battery, and we developed feature-selection machine-learning methods to differentiate the low-risk groups. : Both low-risk groups could be reliably (with 90% accuracy) separated from the control group. : Models applied to the data allowed us to differentiate between healthy university students with latent schizotypal or bipolar tendencies. Our research may improve the sensitivity and specificity of risk-state identification, leading to more effective and safer secondary prevention strategies for individuals in the prodromal phases of these disorders.
早期准确诊断对于有效预防和治疗精神分裂症和双相情感障碍等严重精神疾病至关重要。然而,在这些疾病的早期阶段识别它们仍然是一项重大挑战。我们的目标是开发一种能够在健康志愿者中检测潜在疾病易感性的方法。:通过对自愿参与的健康大学生(N = 710)进行检查情感气质和分裂型特质的问卷调查,我们创建了三组。一组以强调积极分裂型特质为特征(N = 20),一组表现出环性心境气质特质(N = 17),还有一组为在两个方向上均无易感性的对照组(N = 21)。作为复杂的心理、电生理、心理生理和实验室检测的一部分,我们进行了静息态脑电图检查,并开发了特征选择机器学习方法来区分低风险组。:两个低风险组都能可靠地(准确率达90%)与对照组区分开来。:应用于这些数据的模型使我们能够区分具有潜在分裂型或双相情感倾向的健康大学生。我们的研究可能会提高风险状态识别的敏感性和特异性,从而为这些疾病前驱期的个体带来更有效、更安全的二级预防策略。