论文标题

神经发展障碍的联合学习计划:多效ASD检测

A Federated Learning Scheme for Neuro-developmental Disorders: Multi-Aspect ASD Detection

论文作者

Shamseddine, Hala, Otoum, Safa, Mourad, Azzam

论文摘要

自闭症谱系障碍(ASD)是一种神经发展综合征,是由于出生前胚胎学的改变而导致的。除了特定的行为特征外,这种疾病通过特殊的社会限制和重复行为来区分其患者。因此,这可能会使他们在其他个体中以及他们在社区中的整体互动中恶化他们的社会行为。此外,医学研究证明,ASD还影响其患者的面部特征,从而使综合症可以从个人脸上的独特迹象中识别出来。鉴于作为我们工作背后的动机,我们提出了一种新颖的保护联合学习计划,以根据其行为和面部特征在某个人中预测ASD,从而通过面部特征提取来嵌入两个数据特征的合并过程,同时尊重患者数据隐私。在训练联合机器学习模型上的行为和面部图像数据之后,取得了令人鼓舞的结果,根据联合学习环境中的行为特征预测ASD的精度为70 \%,并为鉴于患者的脸部图像而达到了62 \%的精度以预测ASD。然后,我们在合并的数据(行为和面部)上测试了常规和联合ML的行为,在这些数据(行为和面部)中,使用常规逻辑回归模型可以实现65 \%的准确性,而联合学习模型则可以实现63 \%的精度。

Autism Spectrum Disorder (ASD) is a neuro-developmental syndrome resulting from alterations in the embryological brain before birth. This disorder distinguishes its patients by special socially restricted and repetitive behavior in addition to specific behavioral traits. Hence, this would possibly deteriorate their social behavior among other individuals, as well as their overall interaction within their community. Moreover, medical research has proved that ASD also affects the facial characteristics of its patients, making the syndrome recognizable from distinctive signs within an individual's face. Given that as a motivation behind our work, we propose a novel privacy-preserving federated learning scheme to predict ASD in a certain individual based on their behavioral and facial features, embedding a merging process of both data features through facial feature extraction while respecting patient data privacy. After training behavioral and facial image data on federated machine learning models, promising results are achieved, with 70\% accuracy for the prediction of ASD according to behavioral traits in a federated learning environment, and a 62\% accuracy is reached for the prediction of ASD given an image of the patient's face. Then, we test the behavior of regular as well as federated ML on our merged data, behavioral and facial, where a 65\% accuracy is achieved with the regular logistic regression model and 63\% accuracy with the federated learning model.

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