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Identification and individualized prediction of clinical phenotypes in bipolar disorders using neurocognitive data, neuroimaging scans and machine learning

机译:使用神经认知数据,神经影像扫描和机器学习对双极性疾病临床表型的鉴定和个体化预测

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Diagnosis, clinical management and research of psychiatric disorders remain subjective largely guided by historically developed categories which may not effectively capture underlying pathophysiological mechanisms of dysfunction. Here, we report a novel approach of identifying and validating distinct and biologically meaningful clinical phenotypes of bipolar disorders using both unsupervised and supervised machine learning techniques. First, neurocognitive data were analyzed using an unsupervised machine learning approach and two distinct clinical phenotypes identified namely; phenotype I and phenotype II. Second, diffusion weighted imaging scans were pre-processed using the tract-based spatial statistics (TBSS) method and 'skeletonized' white matter fractional anisotropy (FA) and mean diffusivity (MD) maps extracted. The 'skeletonized' white matter FA and MD maps were entered into the Elastic Net machine learning algorithm to distinguish individual subjects' phenotypic labels (e.g. phenotype I vs. phenotype II). This calculation was performed to ascertain whether the identified clinical phenotypes were biologically distinct. Original neurocognitive measurements distinguished individual subjects' phenotypic labels with 94% accuracy (sensitivity = 92%, specificity = 97%). TBSS derived FA and MD measurements predicted individual subjects' phenotypic labels with 76% and 65% accuracy respectively. In addition, individual subjects belonging to phenotypes I and II were distinguished from healthy controls with 57% and 92% accuracy respectively. Neurocognitive task variables identified as most relevant in distinguishing phenotypic labels included; Affective Go/No-Go (AGN), Cambridge Gambling Task (CGT) coupled with inferior fronto-occipital fasciculus and callosal white matter pathways. These results suggest that there may exist two biologically distinct clinical phenotypes in bipolar disorders which can be identified from healthy controls with high accuracy and at an individual subject level. We suggest a strong clinical utility of the proposed approach in defining and validating biologically meaningful and less heterogeneous clinical sub-phenotypes of major psychiatric disorders. (C) 2016 Elsevier Inc. All rights reserved.
机译:诊断,临床管理和精神疾病的研究仍然主观很大程度上是由历史发展类别可能不能有效反映潜在的功能障碍的病理生理机制引导。在这里,我们报告鉴定和验证同时使用无监督和监督的机器学习技术双相障碍的不同和生物学意义的临床表型的新方法。首先,神经认知数据使用无监督机器学习方法和鉴定即两个不同的临床表型分析;我的表型和表型II。其次,扩散加权成像扫描,使用基于道空间统计(TBSS)方法预加工和“骨架”白质各向异性分数(FA)和平均扩散率(MD)映射萃取。 FA和MD图被输入了弹性网络的机器学习算法的“骷髅”白质分辨单个受试者的表型标签(如表型我与表型II)。被识别的临床表型是否是生物学上截然不同的这个计算进行来确定。原始神经认知测量区分个体受试者的表型标记物与94%的准确度(灵敏度= 92%,特异性= 97%)。 TBSS衍生FA和MD测量结果与76%和65%的准确度分别预测个体对象的表型的标记。此外,属于表型I和II的单独被摄体是从健康对照区分,分别为57%和92%的准确性。在包括区分表型标签确定为最相关的神经认知任务变量;再加上劣质情感围棋/不继续(AGN),剑桥赌博任务(CGT)额枕纤维束和胼胝体白质途径。这些结果表明,有可能存在两种不同的生物临床表型,其中可以由具有高精度健康对照和在个体受试者水平上鉴定双相性精神障碍。我们建议在定义和验证的主要精神疾病的生物学意义和较小不均匀性的临床分表型所提出的方法的一个强有力的临床应用。 (c)2016 Elsevier Inc.保留所有权利。

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