Department of Psychiatry, Columbia College of Physicians & Surgeons and the New York State Psychiatric Institute, New York, New York, USA.
PLoS One. 2012;7(12):e50698. doi: 10.1371/journal.pone.0050698. Epub 2012 Dec 7.
Diagnoses using imaging-based measures alone offer the hope of improving the accuracy of clinical diagnosis, thereby reducing the costs associated with incorrect treatments. Previous attempts to use brain imaging for diagnosis, however, have had only limited success in diagnosing patients who are independent of the samples used to derive the diagnostic algorithms. We aimed to develop a classification algorithm that can accurately diagnose chronic, well-characterized neuropsychiatric illness in single individuals, given the availability of sufficiently precise delineations of brain regions across several neural systems in anatomical MR images of the brain.
We have developed an automated method to diagnose individuals as having one of various neuropsychiatric illnesses using only anatomical MRI scans. The method employs a semi-supervised learning algorithm that discovers natural groupings of brains based on the spatial patterns of variation in the morphology of the cerebral cortex and other brain regions. We used split-half and leave-one-out cross-validation analyses in large MRI datasets to assess the reproducibility and diagnostic accuracy of those groupings.
In MRI datasets from persons with Attention-Deficit/Hyperactivity Disorder, Schizophrenia, Tourette Syndrome, Bipolar Disorder, or persons at high or low familial risk for Major Depressive Disorder, our method discriminated with high specificity and nearly perfect sensitivity the brains of persons who had one specific neuropsychiatric disorder from the brains of healthy participants and the brains of persons who had a different neuropsychiatric disorder.
Although the classification algorithm presupposes the availability of precisely delineated brain regions, our findings suggest that patterns of morphological variation across brain surfaces, extracted from MRI scans alone, can successfully diagnose the presence of chronic neuropsychiatric disorders. Extensions of these methods are likely to provide biomarkers that will aid in identifying biological subtypes of those disorders, predicting disease course, and individualizing treatments for a wide range of neuropsychiatric illnesses.
仅使用基于影像学的测量方法进行诊断,有望提高临床诊断的准确性,从而降低因治疗不当而产生的费用。然而,此前利用脑影像学进行诊断的尝试,在诊断独立于用于得出诊断算法的样本的患者方面,仅取得了有限的成功。我们旨在开发一种分类算法,该算法可以在大脑解剖磁共振成像中获得足够精确的多个神经系统的脑区描绘的情况下,准确诊断慢性、特征明确的神经精神疾病患者。
我们开发了一种自动化方法,仅使用解剖磁共振成像扫描即可诊断个体患有各种神经精神疾病。该方法采用半监督学习算法,根据大脑皮层和其他脑区形态变化的空间模式,发现大脑的自然分组。我们使用分割一半和留一法交叉验证分析,在大型磁共振成像数据集评估这些分组的可重复性和诊断准确性。
在注意力缺陷多动障碍、精神分裂症、妥瑞氏症、双相情感障碍患者或具有高或低家族性重度抑郁症风险的个体的磁共振成像数据集,我们的方法以高特异性和几乎完美的敏感性,区分了具有特定神经精神障碍的个体的大脑,与健康参与者和具有不同神经精神障碍的个体的大脑。
虽然分类算法假设存在精确描绘的脑区,但我们的研究结果表明,从磁共振成像扫描中提取的脑表面形态变化模式可以成功诊断出慢性神经精神障碍的存在。这些方法的扩展可能会提供生物标志物,有助于识别这些疾病的生物学亚型,预测疾病进程,并为广泛的神经精神疾病提供个体化治疗。