论文标题
帕金森氏病严重性预测的基于患者的基于游戏的转移方法
Patient-Specific Game-Based Transfer Method for Parkinson's Disease Severity Prediction
论文作者
论文摘要
吞咽困难是帕金森氏病(PD)的早期症状之一。大多数现有方法使用特征选择方法为所有PD患者找到最佳的语音特征子集。很少有人认为患者之间的异质性,这意味着需要为不同患者提供特定的预测模型。但是,建立特定模型面临小样本量的挑战,这使其缺乏概括能力。实例转移是解决此问题的有效方法。因此,本文提出了针对PD严重性预测的基于患者的基于患者的转移(PSGT)方法。首先,选择机制用于从源域中选择与目标患者相似的疾病趋势的PD患者,这大大降低了负转移的风险。然后,转移的受试者及其实例对目标受试者的疾病估计的贡献得到了Shapley值的公平评估,从而提高了该方法的解释性。接下来,确定转移主题中有效实例的比例,并将具有较高贡献的实例转移,以进一步降低转移的实例子集和目标主体之间的差异。最后,将所选的实例子集添加到目标主体的训练集中,并将扩展数据馈入随机森林以提高方法的性能。帕金森的远程监控数据集用于评估可行性和有效性。实验结果表明,PSGT在预测误差和稳定性中具有更好的性能,而不是比较方法。
Dysphonia is one of the early symptoms of Parkinson's disease (PD). Most existing methods use feature selection methods to find the optimal subset of voice features for all PD patients. Few have considered the heterogeneity between patients, which implies the need to provide specific prediction models for different patients. However, building the specific model faces the challenge of small sample size, which makes it lack generalization ability. Instance transfer is an effective way to solve this problem. Therefore, this paper proposes a patient-specific game-based transfer (PSGT) method for PD severity prediction. First, a selection mechanism is used to select PD patients with similar disease trends to the target patient from the source domain, which greatly reduces the risk of negative transfer. Then, the contribution of the transferred subjects and their instances to the disease estimation of the target subject is fairly evaluated by the Shapley value, which improves the interpretability of the method. Next, the proportion of valid instances in the transferred subjects is determined, and the instances with higher contribution are transferred to further reduce the difference between the transferred instance subset and the target subject. Finally, the selected subset of instances is added to the training set of the target subject, and the extended data is fed into the random forest to improve the performance of the method. Parkinson's telemonitoring dataset is used to evaluate the feasibility and effectiveness. Experiment results show that the PSGT has better performance in both prediction error and stability over compared methods.