Parkinson's disease (PD) is a neurodegenerative disease affecting about 1% of people over the age of 60, causing motor impairments that impede hand coordination activities such as writing and drawing. Many approaches have tried to support early detection of Parkinson's disease based on hand-drawn images; however, we identified two major limitations in the related works: (1) the lack of sufficient datasets, (2) the robustness when dealing with unseen patient data. In this paper, we propose a new approach to detect Parkinson's disease that consists of two stages: The first stage classifies based on their drawing type(circle, meander, spiral), and the second stage extracts the required features from the images and detects Parkinson's disease. We overcame the previous two limitations by applying a chunking strategy where we divide each image into 2x2 chunks. Each chunk is processed separately when extracting features and recognizing Parkinson's disease indicators. To make the final classification, an ensemble method is used to merge the decisions made from each chunk. Our evaluation shows that our proposed approach outperforms the top performing state-of-the-art approaches, in particular on unseen patients. On the NewHandPD dataset our approach, it achieved 97.08% accuracy for seen patients and 94.91% for unseen patients, our proposed approach maintained a gap of only 2.17 percentage points, compared to the 4.76-point drop observed in prior work.
翻译:帕金森病是一种神经退行性疾病,影响约1%的60岁以上人群,其导致的运动障碍会妨碍书写和绘画等手部协调活动。许多研究尝试基于手绘图图像支持帕金森病的早期检测;然而,我们发现相关研究存在两个主要局限:(1) 缺乏足够的数据集,(2) 处理未见患者数据时的鲁棒性不足。本文提出一种新的帕金森病检测方法,包含两个阶段:第一阶段根据绘图类型(圆形、回旋线、螺旋线)进行分类,第二阶段从图像中提取所需特征并检测帕金森病。我们通过应用分块策略克服了前述两个局限:将每幅图像划分为2x2分块。在提取特征和识别帕金森病指标时,每个分块被独立处理。为完成最终分类,采用集成方法融合各分块作出的决策。评估结果表明,我们提出的方法优于当前性能最优的先进方法,尤其在未见患者数据上表现突出。在NewHandPD数据集上,我们的方法对已见患者达到97.08%的准确率,对未见患者达到94.91%的准确率,仅维持2.17个百分点的性能差距,而先前工作中观察到的性能下降达4.76个百分点。