Alberta Machine Intelligence Institute, Department of Computing Science, University of Alberta, Edmonton, Alberta, Canada; Canadian VIGOUR Centre, University of Alberta, Edmonton, Alberta, Canada.
Alberta Machine Intelligence Institute, Department of Computing Science, University of Alberta, Edmonton, Alberta, Canada.
Biol Psychiatry Cogn Neurosci Neuroimaging. 2022 Jul;7(7):735-746. doi: 10.1016/j.bpsc.2021.12.003. Epub 2021 Dec 18.
Machine learning applications using neuroimaging provide a multidimensional, data-driven approach that captures the level of complexity necessary for objectively aiding diagnosis and prognosis in psychiatry. However, models learned from small training samples often have limited generalizability, which continues to be a problem with automated diagnosis of mental illnesses such as obsessive-compulsive disorder (OCD). Earlier studies have shown that features incorporating prior neurobiological knowledge of brain function and combining brain parcellations from various sources can potentially improve the overall prediction. However, it is unknown whether such knowledge-driven methods can provide a performance that is comparable to state-of-the-art approaches based on neural networks.
In this study, we apply a transparent and explainable multiparcellation ensemble learning framework EMPaSchiz (Ensemble algorithm with Multiple Parcellations for Schizophrenia prediction) to the task of predicting OCD, based on a resting-state functional magnetic resonance imaging dataset of 350 subjects. Furthermore, we apply transfer learning using the features found effective for schizophrenia to OCD to leverage the commonality in brain alterations across these psychiatric diagnoses.
We show that our knowledge-based approach leads to a prediction performance of 80.3% accuracy for OCD diagnosis that is better than domain-agnostic and automated feature design using neural networks. Furthermore, we show that a selection of reduced feature sets can be transferred from schizophrenia to the OCD prediction model without significant loss in prediction performance.
This study presents a machine learning framework for OCD prediction with neurobiology-aided feature design using resting-state functional magnetic resonance imaging that is generalizable and reasonably interpretable.
使用神经影像学的机器学习应用提供了一种多维、数据驱动的方法,可以捕捉到客观辅助精神病学诊断和预后所需的复杂程度。然而,从小训练样本中学习到的模型通常具有有限的泛化能力,这仍然是自动化诊断强迫症(OCD)等精神疾病的一个问题。早期研究表明,纳入大脑功能的先验神经生物学知识的特征,并结合来自不同来源的大脑分割,可以潜在地提高整体预测能力。然而,尚不清楚这种知识驱动的方法是否可以提供与基于神经网络的最新方法相当的性能。
在这项研究中,我们应用透明且可解释的多分割集成学习框架 EMPaSchiz(用于精神分裂症预测的多分割集成算法),基于 350 名受试者的静息态功能磁共振成像数据集,预测 OCD。此外,我们使用对精神分裂症有效的特征进行迁移学习,以利用这些精神诊断中大脑改变的共性。
我们表明,我们的基于知识的方法导致 OCD 诊断的预测性能达到 80.3%的准确性,优于使用神经网络的无领域知识和自动化特征设计。此外,我们表明,从精神分裂症到 OCD 预测模型的特征选择可以在不显著降低预测性能的情况下进行转移。
这项研究提出了一种使用静息态功能磁共振成像进行 OCD 预测的机器学习框架,具有神经生物学辅助的特征设计,具有可推广性和合理的可解释性。