Kim Hye-Geum, Seo Wan-Seok, Koo Bon-Hoon, Cheon Eun-Jin, Yun Seokho, Jo Sohye, Gu Byoungyoung
Department of Psychiatry, Yeungnam University College of Medicine, Yeungnam University Medical Center, Daegu, Republic of Korea.
KimCheon Medical Center, Gimcheon, Republic of Korea.
Psychiatry Investig. 2024 Aug;21(8):912-917. doi: 10.30773/pi.2024.0157. Epub 2024 Aug 2.
This study aimed to use deep learning (DL) to develop a cost-effective and accessible screening tool to improve the detection of cognitive decline, a precursor of Alzheimer's disease (AD). This study integrating a comprehensive battery of neuropsychological tests adjusted for individual demographic variables such as age, sex, and education level.
A total of 2,863 subjects with subjective cognitive complaints who underwent a comprehensive neuropsychological assessment were included. A random forest classifier was used to discern the most predictive test combinations to distinguish between dementia and nondementia cases. The model was trained and validated on this dataset, focusing on feature importance to determine the cognitive tests that were most indicative of decline.
Subjects had a mean age of 72.68 years and an average education level of 7.62 years. The DL model achieved an accuracy of 82.42% and an area under the curve of 0.816, effectively classifying dementia. Feature importance analysis identified significant tests across cognitive domains: attention was gauged by the Trail Making Test Part B, language by the Boston Naming Test, memory by the Rey Complex Figure Test delayed recall, visuospatial skills by the Rey Complex Figure Test copy score, and frontal function by the Stroop Test Word reading time.
This study showed the potential of DL to improve AD diagnostics, suggesting that a wide range of cognitive assessments could yield a more accurate diagnosis than traditional methods. This research establishes a foundation for future broader studies, which could substantiate the approach and further refine the screening tool.
本研究旨在利用深度学习(DL)开发一种经济高效且易于使用的筛查工具,以改善对认知衰退(阿尔茨海默病(AD)的先兆)的检测。本研究整合了一系列针对年龄、性别和教育水平等个体人口统计学变量进行调整的综合神经心理学测试。
共纳入2863名有主观认知主诉且接受了全面神经心理学评估的受试者。使用随机森林分类器来识别最具预测性的测试组合,以区分痴呆症和非痴呆症病例。在该数据集上对模型进行训练和验证,重点关注特征重要性,以确定最能表明认知衰退的认知测试。
受试者的平均年龄为72.68岁,平均教育水平为7.62年。DL模型的准确率达到82.42%,曲线下面积为0.816,能有效区分痴呆症。特征重要性分析确定了认知领域的重要测试:通过连线测验B部分评估注意力,通过波士顿命名测验评估语言能力,通过雷氏复杂图形测验延迟回忆评估记忆,通过雷氏复杂图形测验临摹分数评估视觉空间技能,通过斯特鲁普测验单词阅读时间评估额叶功能。
本研究表明DL在改善AD诊断方面的潜力,表明广泛的认知评估可能比传统方法产生更准确的诊断。本研究为未来更广泛的研究奠定了基础,这些研究可以证实该方法并进一步完善筛查工具。