论文标题

用于检测前驱和临床痴呆的绘图过程的自动分析

Automated Analysis of Drawing Process for Detecting Prodromal and Clinical Dementia

论文作者

Yamada, Yasunori, Kobayashi, Masatomo, Shinkawa, Kaoru, Nemoto, Miyuki, Ota, Miho, Nemoto, Kiyotaka, Arai, Tetsuaki

论文摘要

痴呆症的早期诊断,特别是在前驱阶段(即轻度认知障碍或MCI),已成为研究和临床优先事项,但仍然具有挑战性。对绘图过程的自动分析已被研究为筛查前驱和临床痴呆症的一种有希望的手段,提供了包含多方面的信息,例如绘图速度,笔姿势,写作压力和暂停。我们研究了不仅使用这些特征来检测前驱和临床痴呆的可行性,还用于预测使用迷你精神状态检查(MMSE)评估的认知障碍的严重程度,以及通过内侧颞叶(MTL)萎缩评估的神经病理变化的严重性。我们从145名认知正常(CN),MCI和痴呆症的老年人中收集了数字化片剂和笔的绘图数据。嵌套的交叉验证结果表明,绘图功能的组合可用于对CN,MCI和痴呆进行分类,AUC的AUC为0.909和75.1%的准确性(CN vs. MCI:82.4%:82.4%的准确性; CN vs.痴呆症:92.2%的精度; MCI vs. vs. vs. vs. 80.3%:$ 3%的精度)。 MTL萎缩的$ r^2 $为0.293。我们的发现表明,对绘图过程的自动分析可以提供有关痴呆症引起的认知障碍和神经病理学变化的信息,这可以帮助识别前沿和临床痴呆作为数字生物标志物。

Early diagnosis of dementia, particularly in the prodromal stage (i.e., mild cognitive impairment, or MCI), has become a research and clinical priority but remains challenging. Automated analysis of the drawing process has been studied as a promising means for screening prodromal and clinical dementia, providing multifaceted information encompassing features, such as drawing speed, pen posture, writing pressure, and pauses. We examined the feasibility of using these features not only for detecting prodromal and clinical dementia but also for predicting the severity of cognitive impairments assessed using Mini-Mental State Examination (MMSE) as well as the severity of neuropathological changes assessed by medial temporal lobe (MTL) atrophy. We collected drawing data with a digitizing tablet and pen from 145 older adults of cognitively normal (CN), MCI, and dementia. The nested cross-validation results indicate that the combination of drawing features could be used to classify CN, MCI, and dementia with an AUC of 0.909 and 75.1% accuracy (CN vs. MCI: 82.4% accuracy; CN vs. dementia: 92.2% accuracy; MCI vs. dementia: 80.3% accuracy) and predict MMSE scores with an $R^2$ of 0.491 and severity of MTL atrophy with an $R^2$ of 0.293. Our findings suggest that automated analysis of the drawing process can provide information about cognitive impairments and neuropathological changes due to dementia, which can help identify prodromal and clinical dementia as a digital biomarker.

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