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首页> 外文期刊>NeuroImage >Can structural MRI aid in clinical classification? A machine learning study in two independent samples of patients with schizophrenia, bipolar disorder and healthy subjects
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Can structural MRI aid in clinical classification? A machine learning study in two independent samples of patients with schizophrenia, bipolar disorder and healthy subjects

机译:结构核磁共振可以帮助临床分类吗?对精神分裂症,双相情感障碍和健康受试者的两个独立样本进行的机器学习研究

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Although structural magnetic resonance imaging (MRI) has revealed partly non-overlapping brain abnormalities in schizophrenia and bipolar disorder, it is unknown whether structural MRI scans can be used to separate individuals with schizophrenia from those with bipolar disorder. An algorithm capable of discriminating between these two disorders could become a diagnostic aid for psychiatrists. Here, we scanned 66 schizophrenia patients, 66 patients with bipolar disorder and 66 healthy subjects on a 1.5 T MRI scanner. Three support vector machines were trained to separate patients with schizophrenia from healthy subjects, patients with schizophrenia from those with bipolar disorder, and patients with bipolar disorder from healthy subjects, respectively, based on their gray matter density images. The predictive power of the models was tested using cross-validation and in an independent validation set of 46 schizophrenia patients, 47 patients with bipolar disorder and 43 healthy subjects scanned on a 3 T MRI scanner. Schizophrenia patients could be separated from healthy subjects with an average accuracy of 90%. Additionally, schizophrenia patients and patients with bipolar disorder could be distinguished with an average accuracy of 88%.The model delineating bipolar patients from healthy subjects was less accurate, correctly classifying 67% of the healthy subjects and only 53% of the patients with bipolar disorder. In the latter group, lithium and antipsychotics use had no influence on the classification results. Application of the 1.5 T models on the 3 T validation set yielded average classification accuracies of 76% (healthy vs schizophrenia), 66% (bipolar vs schizophrenia) and 61% (healthy vs bipolar). In conclusion, the accurate separation of schizophrenia from bipolar patients on the basis of structural MRI scans, as demonstrated here, could be of added value in the differential diagnosis of these two disorders. The results also suggest that gray matter pathology in schizophrenia and bipolar disorder differs to such an extent that they can be reliably differentiated using machine learning paradigms.
机译:尽管结构磁共振成像(MRI)已显示出精神分裂症和双相情感障碍的部分非重叠性脑部异常,但尚不知道结构MRI扫描能否用于将精神分裂症患者与双相情感障碍的患者区分开。能够区分这两种疾病的算法可以成为精神科医生的诊断辅助。在这里,我们使用1.5 T MRI扫描仪扫描了66位精神分裂症患者,66位双相情感障碍患者和66位健康受试者。训练了三种支持向量机,分别根据他们的灰质密度图像将精神分裂症患者与健康受试者,精神分裂症患者与双相情感障碍的患者以及躁郁症患者与健康受试者的患者分开。使用交叉验证并在3T MRI扫描仪上扫描的46位精神分裂症患者,47位躁郁症患者和43位健康受试者的独立验证集中测试了模型的预测能力。精神分裂症患者可以从健康受试者中分离出来,平均准确率为90%。此外,精神分裂症患者和双相情感障碍患者的平均准确度可达88%。从健康受试者中划定双相情感障碍患者的模型准确性较差,正确分类了67%的健康受试者和53%的双相情感障碍患者。在后一组中,锂和抗精神病药的使用对分类结果没有影响。将1.5 T模型应用于3 T验证集可产生平均分类准确率,分别为76%(健康与精神分裂症),66%(双相与精神分裂症)和61%(健康与精神分裂症)。总之,如本文所示,在结构性MRI扫描的基础上,将双相型精神分裂症患者与精神分裂症进行准确的分离可能对这两种疾病的鉴别诊断具有附加价值。结果还表明,精神分裂症和双相情感障碍的灰质病理学差异如此之大,可以使用机器学习范式可靠地区分它们。

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