Parkinson's disease is the world's fastest growing neurological disorder. Research to elucidate the mechanisms of Parkinson's disease and automate diagnostics would greatly improve the treatment of patients with Parkinson's disease. Current diagnostic methods are expensive with limited availability. Considering the long progression time of Parkinson's disease, a desirable screening should be diagnostically accurate even before the onset of symptoms to allow medical intervention. We promote attention for retinal fundus imaging, often termed a window to the brain, as a diagnostic screening modality for Parkinson's disease. We conduct a systematic evaluation of conventional machine learning and deep learning techniques to classify Parkinson's disease from UK Biobank fundus imaging. Our results suggest Parkinson's disease individuals can be differentiated from age and gender matched healthy subjects with 71% accuracy. This accuracy is maintained when predicting either prevalent or incident Parkinson's disease. Explainability and trustworthiness is enhanced by visual attribution maps of localized biomarkers and quantified metrics of model robustness to data perturbations.
翻译:帕金森氏病是世界上增长最快的神经疾病。 研究以阐明帕金森氏病和自动诊断机制将极大地改善帕金森病患者的治疗。 目前,诊断方法非常昂贵,可用性有限。 考虑到帕金森病的长期持续时间,理想的筛查应该诊断准确,甚至在症状发作之前就应允许医疗干预。 我们提倡关注视网膜基金成像,通常称之为大脑的窗口,作为帕金森病的诊断筛查模式。 我们系统地评估常规机器学习和深层学习技术,将帕金森氏病与英国生物银行基金成像区分开来。 我们的结果表明,帕金森病的患者可以与年龄和性别相匹配,且精确度为71%。 在预测帕金森氏病流行或突发时,这种准确度保持不变。 本地生物标志的直观归属图和数据模型坚固度的量化指标加强了可解释性和信任性。