Development of a cerebellar ataxia diagnosis model using conditional GAN-based synthetic data generation for visuomotor adaptation task.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS BMC Medical Informatics and Decision Making Pub Date : 2024-11-12 DOI:10.1186/s12911-024-02720-y
Jinah Kim, Sung-Ho Woo, Taekyung Kim, Won Tae Yoon, Jung Hwan Shin, Jee-Young Lee, Jeh-Kwang Ryu
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Abstract

This study proposes a synthetic data generation model to create a classification framework for cerebellar ataxia patients using trajectory data from the visuomotor adaptation task. The classification objectives include patients with cerebellar ataxia, age-matched normal individuals, and young healthy subjects. Synthetic data for the three classes is generated based on class conditions and random noise by leveraging a combination of conditional adversarial generative neural networks and reconstruction networks. This synthetic data, alongside real data, is utilized as training data for the patient classification model to enhance classification accuracy. The fidelity of the synthetic data is assessed visually to measure the validity and diversity of the generated data qualitatively while quantitatively evaluating distribution similarity to real data. Furthermore, the clinical efficacy of the patient classification model employing synthetic data is demonstrated by showcasing improved classification accuracy through a comparative analysis between results obtained using solely real data and those obtained when both real and synthetic data are utilized. This methodological approach holds promise in addressing data insufficiency in the digital healthcare domain, employing deep learning methodologies, and developing early disease diagnosis tools.

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利用基于条件 GAN 的视觉运动适应任务合成数据生成技术,开发小脑共济失调诊断模型。
本研究提出了一种合成数据生成模型,利用视觉运动适应任务的轨迹数据创建小脑共济失调患者分类框架。分类目标包括小脑共济失调患者、年龄匹配的正常人和年轻健康人。利用条件对抗生成神经网络和重建网络的组合,根据类别条件和随机噪声生成三个类别的合成数据。这些合成数据与真实数据一起用作患者分类模型的训练数据,以提高分类的准确性。对合成数据的保真度进行直观评估,以定性衡量生成数据的有效性和多样性,同时定量评估与真实数据分布的相似性。此外,通过对仅使用真实数据和同时使用真实数据和合成数据所获得的结果进行比较分析,展示了分类准确性的提高,从而证明了采用合成数据的患者分类模型的临床疗效。这种方法有望解决数字医疗领域的数据不足问题、运用深度学习方法以及开发早期疾病诊断工具。
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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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