Department of Psychosis Studies, Institute of Psychiatry, King's College London London, UK.
Department of Psychosis Studies, Institute of Psychiatry, King's College London London, UK ; Center for Mind/Brain Studies (CIMeC), University of Trento Trento, Italy.
Front Neurosci. 2014 Jul 15;8:189. doi: 10.3389/fnins.2014.00189. eCollection 2014.
In the pursuit of clinical utility, neuroimaging researchers of psychiatric and neurological illness are increasingly using analyses, such as support vector machine, that allow inference at the single-subject level. Recent studies employing single-modality data, however, suggest that classification accuracies must be improved for such utility to be realized. One possible solution is to integrate different data types to provide a single combined output classification; either by generating a single decision function based on an integrated kernel matrix, or, by creating an ensemble of multiple single modality classifiers and integrating their predictions. Here, we describe four integrative approaches: (1) an un-weighted sum of kernels, (2) multi-kernel learning, (3) prediction averaging, and (4) majority voting, and compare their ability to enhance classification accuracy relative to the best single-modality classification accuracy. We achieve this by integrating structural, functional, and diffusion tensor magnetic resonance imaging data, in order to compare ultra-high risk (n = 19), first episode psychosis (n = 19) and healthy control subjects (n = 23). Our results show that (i) whilst integration can enhance classification accuracy by up to 13%, the frequency of such instances may be limited, (ii) where classification can be enhanced, simple methods may yield greater increases relative to more computationally complex alternatives, and, (iii) the potential for classification enhancement is highly influenced by the specific diagnostic comparison under consideration. In conclusion, our findings suggest that for moderately sized clinical neuroimaging datasets, combining different imaging modalities in a data-driven manner is no "magic bullet" for increasing classification accuracy. However, it remains possible that this conclusion is dependent on the use of neuroimaging modalities that had little, or no, complementary information to offer one another, and that the integration of more diverse types of data would have produced greater classification enhancement. We suggest that future studies ideally examine a greater variety of data types (e.g., genetic, cognitive, and neuroimaging) in order to identify the data types and combinations optimally suited to the classification of early stage psychosis.
在追求临床实用性的过程中,精神疾病和神经疾病的神经影像学研究人员越来越多地使用支持向量机等分析方法,以便进行个体水平的推断。然而,最近的一些采用单模态数据的研究表明,必须提高分类准确性,才能实现这种实用性。一种可能的解决方案是整合不同的数据类型,提供单一的综合输出分类;或者基于综合核矩阵生成单个决策函数,或者创建多个单模态分类器的集成并整合其预测。在这里,我们描述了四种整合方法:(1)核的无权重和,(2)多核学习,(3)预测平均,和(4)多数投票,并比较它们相对于最佳单模态分类准确性提高分类准确性的能力。我们通过整合结构、功能和弥散张量磁共振成像数据来实现这一点,以便比较超高风险(n = 19)、首发精神病(n = 19)和健康对照组(n = 23)。我们的结果表明,(i)虽然整合可以提高分类准确性高达 13%,但这种情况的频率可能有限,(ii)在可以提高分类的情况下,简单的方法可能相对于更复杂的替代方法产生更大的提高,以及,(iii)分类增强的可能性高度受到正在考虑的特定诊断比较的影响。总之,我们的研究结果表明,对于中等大小的临床神经影像学数据集,以数据驱动的方式结合不同的成像模式并不是提高分类准确性的“灵丹妙药”。然而,这一结论可能取决于使用神经影像学模式,这些模式彼此之间几乎没有或没有互补信息,并且整合更多种类的数据将产生更大的分类增强。我们建议未来的研究理想情况下检查更多种类的数据类型(例如,遗传、认知和神经影像学),以确定最适合早期精神病分类的最佳数据类型和组合。