Merone Mario, D'Addario Sebastian Luca, Mirino Pierandrea, Bertino Francesca, Guariglia Cecilia, Ventura Rossella, Capirchio Adriano, Baldassarre Gianluca, Silvetti Massimo, Caligiore Daniele
Unit of Computer Systems and Bioinformatics, Department of Engineering, Università Campus Bio-Medico di Roma, Via Alvaro del Portillo 21, 00128, Rome, Italy.
Department of Psychology, Sapienza University, Piazzale Aldo Moro 5, 00185, Rome, Italy.
Brain Inform. 2022 Sep 3;9(1):20. doi: 10.1186/s40708-022-00168-2.
Alzheimer's disease (AD) diagnosis often requires invasive examinations (e.g., liquor analyses), expensive tools (e.g., brain imaging) and highly specialized personnel. The diagnosis commonly is established when the disorder has already caused severe brain damage, and the clinical signs begin to be apparent. Instead, accessible and low-cost approaches for early identification of subjects at high risk for developing AD years before they show overt symptoms are fundamental to provide a critical time window for more effective clinical management, treatment, and care planning. This article proposes an ensemble-based machine learning algorithm for predicting AD development within 9 years from first overt signs and using just five clinical features that are easily detectable with neuropsychological tests. The validation of the system involved both healthy individuals and mild cognitive impairment (MCI) patients drawn from the ADNI open dataset, at variance with previous studies that considered only MCI. The system shows higher levels of balanced accuracy, negative predictive value, and specificity than other similar solutions. These results represent a further important step to build a preventive fast-screening machine-learning-based tool to be used as a part of routine healthcare screenings.
阿尔茨海默病(AD)的诊断通常需要进行侵入性检查(如脑脊液分析)、昂贵的工具(如脑部成像)以及高度专业化的人员。通常在该疾病已经造成严重脑损伤且临床症状开始显现时才能确诊。相反,在出现明显症状的数年前,就能够早期识别出AD高危人群的可及且低成本的方法,对于提供一个关键的时间窗以进行更有效的临床管理、治疗和护理规划至关重要。本文提出了一种基于集成学习的机器学习算法,该算法仅使用通过神经心理学测试易于检测的五个临床特征,就能从首次出现明显症状起预测9年内AD的发展情况。该系统的验证涉及从ADNI开放数据集中选取的健康个体和轻度认知障碍(MCI)患者,这与以往仅考虑MCI的研究不同。该系统在平衡准确率、阴性预测值和特异性方面表现出比其他类似解决方案更高的水平。这些结果代表了构建一种基于机器学习的预防性快速筛查工具的又一重要步骤,该工具可作为常规医疗筛查的一部分使用。