Souillard-Mandar William, Davis Randall, Rudin Cynthia, Au Rhoda, Libon David J, Swenson Rodney, Price Catherine C, Lamar Melissa, Penney Dana L
MIT Computer Science And Artificial Intelligence Laboratory, Tel.: +1-617-800-3033,
MIT Computer Science And Artificial Intelligence Laboratory, Tel.: +1-617-253-5879,
Mach Learn. 2016 Mar;102(3):393-441. doi: 10.1007/s10994-015-5529-5. Epub 2015 Oct 20.
The Clock Drawing Test - a simple pencil and paper test - has been used for more than 50 years as a screening tool to differentiate normal individuals from those with cognitive impairment, and has proven useful in helping to diagnose cognitive dysfunction associated with neurological disorders such as Alzheimer's disease, Parkinson's disease, and other dementias and conditions. We have been administering the test using a digitizing ballpoint pen that reports its position with considerable spatial and temporal precision, making available far more detailed data about the subject's performance. Using pen stroke data from these drawings categorized by our software, we designed and computed a large collection of features, then explored the tradeoffs in performance and interpretability in classifiers built using a number of different subsets of these features and a variety of different machine learning techniques. We used traditional machine learning methods to build prediction models that achieve high accuracy. We operationalized widely used manual scoring systems so that we could use them as benchmarks for our models. We worked with clinicians to define guidelines for model interpretability, and constructed sparse linear models and rule lists designed to be as easy to use as scoring systems currently used by clinicians, but more accurate. While our models will require additional testing for validation, they offer the possibility of substantial improvement in detecting cognitive impairment earlier than currently possible, a development with considerable potential impact in practice.
画钟测试——一种简单的纸笔测试——50多年来一直被用作区分正常人与认知障碍者的筛查工具,并且已被证明有助于诊断与阿尔茨海默病、帕金森病以及其他痴呆症和病症等神经系统疾病相关的认知功能障碍。我们一直在使用一种数字化圆珠笔进行该测试,这种笔能以相当高的空间和时间精度报告其位置,从而提供关于受试者表现的更为详细的数据。利用我们的软件对这些绘图中的笔触数据进行分类,我们设计并计算了大量特征,然后探讨了在使用这些特征的多个不同子集以及各种不同机器学习技术构建的分类器中,性能与可解释性之间的权衡。我们使用传统机器学习方法构建了具有高精度的预测模型。我们将广泛使用的人工评分系统进行了操作化处理,以便能够将其用作我们模型的基准。我们与临床医生合作定义了模型可解释性的指导原则,并构建了稀疏线性模型和规则列表,旨在使其与临床医生目前使用的评分系统一样易于使用,但更准确。虽然我们的模型需要进行额外测试以进行验证,但它们提供了比目前更早检测出认知障碍的显著改进的可能性,这一进展在实践中具有相当大的潜在影响。