Methods of Plasticity Research, Department of Psychology, University of Zurich, Zurich, Switzerland.
University Research Priority Program (URPP) Dynamics of Healthy Aging, Zurich, Switzerland.
Elife. 2024 Nov 28;13:RP96017. doi: 10.7554/eLife.96017.
Memory deficits are a hallmark of many different neurological and psychiatric conditions. The Rey-Osterrieth complex figure (ROCF) is the state-of-the-art assessment tool for neuropsychologists across the globe to assess the degree of non-verbal visual memory deterioration. To obtain a score, a trained clinician inspects a patient's ROCF drawing and quantifies deviations from the original figure. This manual procedure is time-consuming, slow and scores vary depending on the clinician's experience, motivation, and tiredness. Here, we leverage novel deep learning architectures to automatize the rating of memory deficits. For this, we collected more than 20k hand-drawn ROCF drawings from patients with various neurological and psychiatric disorders as well as healthy participants. Unbiased ground truth ROCF scores were obtained from crowdsourced human intelligence. This dataset was used to train and evaluate a multihead convolutional neural network. The model performs highly unbiased as it yielded predictions very close to the ground truth and the error was similarly distributed around zero. The neural network outperforms both online raters and clinicians. The scoring system can reliably identify and accurately score individual figure elements in previously unseen ROCF drawings, which facilitates explainability of the AI-scoring system. To ensure generalizability and clinical utility, the model performance was successfully replicated in a large independent prospective validation study that was pre-registered prior to data collection. Our AI-powered scoring system provides healthcare institutions worldwide with a digital tool to assess objectively, reliably, and time-efficiently the performance in the ROCF test from hand-drawn images.
记忆缺陷是许多不同的神经和精神疾病的标志。 Rey-Osterrieth 复杂图形(ROCF)是全球神经心理学家评估非言语视觉记忆恶化程度的最新评估工具。为了获得分数,经过培训的临床医生会检查患者的 ROCF 绘图并量化与原始图形的偏差。这种手动程序既耗时又缓慢,而且分数取决于临床医生的经验、积极性和疲劳程度。在这里,我们利用新的深度学习架构来自动化评分记忆缺陷。为此,我们从患有各种神经和精神疾病以及健康参与者的患者中收集了超过 20,000 张手绘 ROCF 图纸。从众包的人类智能中获得了公正的 ROCF 原始分数。该数据集用于训练和评估多头卷积神经网络。该模型表现出高度的公正性,因为它的预测非常接近真实分数,并且误差也均匀分布在零附近。该神经网络优于在线评分者和临床医生。评分系统能够可靠地识别和准确地对以前看不见的 ROCF 图纸中的各个图形元素进行评分,这有助于解释 AI 评分系统。为了确保通用性和临床实用性,该模型在一项大型独立前瞻性验证研究中成功复制,该研究在数据收集之前进行了预先注册。我们的人工智能评分系统为全球医疗机构提供了一种数字工具,可从手绘图像中对手动 ROCF 测试的性能进行客观、可靠和高效的评估。