Instituto Universitario de Ciencias y Tecnologías Cibernéticas, Universidad de Las Palmas de Gran Canaria, Las Palmas de Gran Canaria, Spain.
Departamento de Ingeniería Informática y de Sistemas, Universidad de La Laguna, La Laguna, Spain.
Comput Math Methods Med. 2021 Jun 21;2021:5545297. doi: 10.1155/2021/5545297. eCollection 2021.
Clinical procedure for mild cognitive impairment (MCI) is mainly based on clinical records and short cognitive tests. However, low suspicion and difficulties in understanding test cut-offs make diagnostic accuracy being low, particularly in primary care. Artificial neural networks (ANNs) are suitable to design computed aided diagnostic systems because of their features of generating relationships between variables and their learning capability. The main aim pursued in that work is to explore the ability of a hybrid ANN-based system in order to provide a tool to assist in the clinical decision-making that facilitates a reliable MCI estimate. The model is designed to work with variables usually available in primary care, including Minimental Status Examination (MMSE), Functional Assessment Questionnaire (FAQ), Geriatric Depression Scale (GDS), age, and years of education. It will be useful in any clinical setting. Other important goal of our study is to compare the diagnostic rendering of ANN-based system and clinical physicians. A sample of 128 MCI subjects and 203 controls was selected from the Alzheimer's Disease Neuroimaging Initiative (ADNI). The ANN-based system found the optimal variable combination, being AUC, sensitivity, specificity, and clinical utility index (CUI) calculated. The ANN results were compared with those from medical experts which include two family physicians, a neurologist, and a geriatrician. The optimal ANN model reached an AUC of 95.2%, with a sensitivity of 90.0% and a specificity of 84.78% and was based on MMSE, FAQ, and age inputs. As a whole, physician performance achieved a sensitivity of 46.66% and a specificity of 91.3%. CUIs were also better for the ANN model. The proposed ANN system reaches excellent diagnostic accuracy although it is based only on common clinical tests. These results suggest that the system is especially suitable for primary care implementation, aiding physicians work with cognitive impairment suspicions.
轻度认知障碍 (MCI) 的临床程序主要基于临床记录和简短的认知测试。然而,由于低怀疑率和对测试截止值的理解困难,诊断准确性较低,尤其是在初级保健中。人工神经网络 (ANNs) 非常适合设计计算机辅助诊断系统,因为它们具有生成变量之间关系的功能和学习能力。这项工作的主要目的是探索基于混合 ANN 的系统的能力,以便提供一种工具来协助临床决策,从而可靠地估计 MCI。该模型旨在使用初级保健中通常可用的变量(包括简易精神状态检查 (MMSE)、功能评估问卷 (FAQ)、老年抑郁量表 (GDS)、年龄和受教育年限)进行工作。它将在任何临床环境中都非常有用。我们研究的另一个重要目标是比较基于 ANN 的系统和临床医生的诊断性能。从阿尔茨海默病神经影像学倡议 (ADNI) 中选择了 128 名 MCI 患者和 203 名对照者的样本。基于 ANN 的系统找到了最佳变量组合,并计算了 AUC、敏感性、特异性和临床效用指数 (CUI)。将 ANN 结果与包括两名家庭医生、一名神经科医生和一名老年病医生在内的医学专家的结果进行了比较。最佳 ANN 模型达到了 95.2%的 AUC,敏感性为 90.0%,特异性为 84.78%,基于 MMSE、FAQ 和年龄输入。总的来说,医生的表现达到了 46.66%的敏感性和 91.3%的特异性。CUI 也更适合 ANN 模型。尽管该系统仅基于常见的临床测试,但它达到了出色的诊断准确性。这些结果表明,该系统特别适合在初级保健中实施,辅助医生处理认知障碍的可疑病例。