机器学习对痴呆筛查绘画行为的影响

K. Tsoi, Max W. Y. Lam, C. Chu, Michael P. F. Wong, H. Meng
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We had developed a platform to capture the drawing behavior and invited participants with different levels of dementia to be screened with this digital test. Aim: We applied machine learning to study the relationship of drawing behavioral data between participants with or without symptoms of dementia, and hypothesized that brain response time when drawing a simple figure can be digitalized for early detection of dementia. Methods: Patients diagnosed with moderate-to-severe stage of Alzheimer's disease (AD) were recruited from dementia clinics in Hong Kong. People without clinical symptoms of dementia were recruited from local community centers. Montreal Cognitive Assessment (MoCA) test was done in all subjects before screening with the digital screening test. AD patients were classified with MoCA∠22, and healthy subjects were with MoCA'22 as suggested by Tan etal. [1] All participants had to draw two interlocking pentagons using their fingers on the touch screen in a tablet with reference to a sample figure. The drawing processes were modelled by Markov chains of order m, with n states of two continuous variables - drawing velocity and drawing direction. To transit from one state to another, for continuous variable we need a transition function instead of transition matrix. Gaussian processes were employed to specify the set of transition functions as distributions. This maintained a probabilistic tractability for Bayesian inference. Together the resultant combination of models is coined Gaussian process Markov Chains (GPMC). To maximizing specificity and sensitivity, we determined an optimal cut-off by plotting a Receiver Operating Characteristic (ROC) curve. The performance of the drawing platform was compared to the human judgement with reference to the scoring standard in the traditional screening test, the Mini-Mental State Examination (MMSE). Confidence intervals were calculated using Clopper-Pearson exact method. Results: A total of 798 participates was recruited, and 519 (65.0%) of them were classified with AD. The average age of AD patients was 80.3 years (SD=6.5), and average MoCA scores of 14.6 (SD=4.8). The median drawing time of the interlocking pentagons was 17.5 seconds. In the 279 healthy subjects, the average age was 75.5 years (SD=7.7), and with average MoCA scores of 24.9 (SD=2.1). The median drawing time on the pentagons was 12.7 seconds. The digital drawing platform shows a good diagnostic performance on the patients with AD with sensitivity of 74.1% and specificity of 72.3%. The comparison with the traditional scoring method in MMSE was shown in Table 1. 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引用次数: 4

摘要

痴呆症是一个影响全世界数百万老年人的公共卫生问题。许多筛查测试可用于早期发现痴呆症的症状,但大多数都是纸笔形式的。对测试成绩的指导和判断在很大程度上依赖于医护人员,但主观评价往往会产生人为偏见。随着技术的进步,筛选测试可以数字化为计算格式,并在任何便携式设备上进行。几何绘图是筛查工具中常见的问题之一,数字筛查平台可以实时捕捉绘图行为,直接反映筛查过程中大脑的反应。我们开发了一个平台来捕捉绘画行为,并邀请患有不同程度痴呆症的参与者进行数字测试。目的:我们应用机器学习研究有或无痴呆症状的参与者绘制行为数据的关系,并假设绘制简单图形时的大脑反应时间可以数字化,用于早期发现痴呆。方法:从香港痴呆诊所招募诊断为中度至重度阿尔茨海默病(AD)的患者。研究人员从当地社区中心招募了没有痴呆临床症状的人。所有受试者在进行数字筛选前进行蒙特利尔认知评估(MoCA)测试。根据Tan等的建议,将AD患者分为MoCA∠22型,健康人分为MoCA∠22型。[1]所有的参与者都必须用手指在平板电脑的触摸屏上画出两个环环相扣的五边形,并参考一个样本图。采用m阶马尔可夫链对拉拔过程进行建模,拉拔速度和拉拔方向这两个连续变量有n个状态。为了从一个状态过渡到另一个状态,对于连续变量,我们需要一个过渡函数而不是过渡矩阵。采用高斯过程将过渡函数集合指定为分布。这保持了贝叶斯推理的概率可追溯性。这些模型的组合结果称为高斯过程马尔可夫链(GPMC)。为了最大限度地提高特异性和敏感性,我们通过绘制受试者工作特征(ROC)曲线确定了最佳截止点。参照传统筛选测试MMSE (Mini-Mental State Examination)的评分标准,将绘图平台的性能与人的判断进行比较。采用Clopper-Pearson精确方法计算置信区间。结果:共招募798名参与者,其中519人(65.0%)被分类为AD。AD患者平均年龄80.3岁(SD=6.5), MoCA评分平均14.6分(SD=4.8)。互锁五边形的平均绘制时间为17.5秒。279名健康受试者平均年龄为75.5岁(SD=7.7), MoCA评分平均为24.9分(SD=2.1)。绘制五边形的平均时间为12.7秒。数字绘图平台对AD患者具有良好的诊断性能,敏感性为74.1%,特异性为72.3%。与传统MMSE评分方法的比较如表1所示。结论:数字化平台可以实时捕捉患者的绘画行为,并通过机器学习方法对其进行分析,有助于早期发现痴呆症。其他关于记忆、注意力和执行功能的行为测试可以进一步发展为集中认知筛查的数字平台。实时行为特征的大数据将成为数字健康研究的一个新兴领域。表1:不同筛查方法对痴呆MMSE的筛查效果评分(95% CI)制图平台(95% CI)敏感性68.8%(64.6%,72.8%)74.2%(70.2%,77.9%)特异性52.5%(45。阳性预测值77.4%(74.7%,80.0%)83.3%(80.4%,85.9%)阴性预测值41.5%(37.2%,45.9%)60.1%(56.2%,64.0%)简写:CI:置信区间
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning on Drawing Behavior for Dementia Screening
Dementia is a public health problem which is affecting millions of elderly worldwide. Many screening tests are available for early detection on the symptoms of dementia, but most of them are in paper-and-pencil form. The guidance and judgment on test performance are heavily relied on healthcare professionals, but the subjective evaluation always incurs human bias. With advancement of technology, screening tests can be digitalized into computing format, and performed in any portable devices. Geometric drawing is one of the common questions among the screening tools, and digital screening platforms can real-time capture the drawing behavior which directly reflects the brain response during the screening. We had developed a platform to capture the drawing behavior and invited participants with different levels of dementia to be screened with this digital test. Aim: We applied machine learning to study the relationship of drawing behavioral data between participants with or without symptoms of dementia, and hypothesized that brain response time when drawing a simple figure can be digitalized for early detection of dementia. Methods: Patients diagnosed with moderate-to-severe stage of Alzheimer's disease (AD) were recruited from dementia clinics in Hong Kong. People without clinical symptoms of dementia were recruited from local community centers. Montreal Cognitive Assessment (MoCA) test was done in all subjects before screening with the digital screening test. AD patients were classified with MoCA∠22, and healthy subjects were with MoCA'22 as suggested by Tan etal. [1] All participants had to draw two interlocking pentagons using their fingers on the touch screen in a tablet with reference to a sample figure. The drawing processes were modelled by Markov chains of order m, with n states of two continuous variables - drawing velocity and drawing direction. To transit from one state to another, for continuous variable we need a transition function instead of transition matrix. Gaussian processes were employed to specify the set of transition functions as distributions. This maintained a probabilistic tractability for Bayesian inference. Together the resultant combination of models is coined Gaussian process Markov Chains (GPMC). To maximizing specificity and sensitivity, we determined an optimal cut-off by plotting a Receiver Operating Characteristic (ROC) curve. The performance of the drawing platform was compared to the human judgement with reference to the scoring standard in the traditional screening test, the Mini-Mental State Examination (MMSE). Confidence intervals were calculated using Clopper-Pearson exact method. Results: A total of 798 participates was recruited, and 519 (65.0%) of them were classified with AD. The average age of AD patients was 80.3 years (SD=6.5), and average MoCA scores of 14.6 (SD=4.8). The median drawing time of the interlocking pentagons was 17.5 seconds. In the 279 healthy subjects, the average age was 75.5 years (SD=7.7), and with average MoCA scores of 24.9 (SD=2.1). The median drawing time on the pentagons was 12.7 seconds. The digital drawing platform shows a good diagnostic performance on the patients with AD with sensitivity of 74.1% and specificity of 72.3%. The comparison with the traditional scoring method in MMSE was shown in Table 1. Conclusion: Drawing behavior can be real-time captured with digital platform and further analyzed by machine learning methods for early detection of dementia. Other behavioral tests on memory, attention, and executive functions can be further developed as a digital platform for centralized cognitive screening. Big data on real-time behavioral features will be an emerging area in digital health research. Table 1: Screening Performance of Different Screening Methods for Dementia MMSE»s Scoring (95% CI)Drawing platform (95% CI) Sensitivity68.8% (64.6%, 72.8%)74.2% (70.2%, 77.9%) Specificity52.5% (45. 7%, 59.3%)72.4% (66.8%, 77.6%) Positive predictive value77.4% (74.7%, 80.0%)83.3% (80.4%, 85.9%) Negative predictive value41.5% (37.2%, 45.9%)60.1% (56.2%, 64.0%) Abbreviation: CI: confidence interval
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