[基于时空特征学习的视野预测]。

Wo Wang, Xiujuan Zheng, Zhiqing Lyu, Ni Li, Jun Chen
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引用次数: 0

摘要

青光眼是导致全球失明的主要不可逆原因。定期进行视野检查在诊断和治疗青光眼方面起着至关重要的作用。预测未来的视野变化可以帮助临床医生及时采取干预措施,控制疾病的发展。为了整合过去视野检查结果的时间和空间特征并增强视野预测能力,我们采用了卷积长短期记忆(ConvLSTM)网络来构建预测模型。利用华盛顿大学(UWHVF)汉弗莱视野分析仪的视野测试数据集,对 ConvLSTM 模型的预测性能进行了验证,并与其他方法进行了比较。与传统方法相比,ConvLSTM 模型的预测准确率更高。此外,还研究了视野序列长度与预测性能之间的关系。在使用过去 1.5~6.0 年的前三次视野结果预测视野时,发现 ConvLSTM 模型的性能更好,其平均绝对误差为 2.255 dB,均方根误差为 3.457 dB,决定系数为 0.960。实验结果表明,所提出的方法能有效利用现有的视野检查结果,对未来 0.5~2.0 年的视野进行更准确的预测。这种方法有望帮助临床医生诊断和治疗青光眼患者的视野恶化。
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[Visual field prediction based on temporal-spatial feature learning].

Glaucoma stands as the leading irreversible cause of blindness worldwide. Regular visual field examinations play a crucial role in both diagnosing and treating glaucoma. Predicting future visual field changes can assist clinicians in making timely interventions to manage the progression of this disease. To integrate temporal and spatial features from past visual field examination results and enhance visual field prediction, a convolutional long short-term memory (ConvLSTM) network was employed to construct a predictive model. The predictive performance of the ConvLSTM model was validated and compared with other methods using a dataset of perimetry tests from the Humphrey field analyzer at the University of Washington (UWHVF). Compared to traditional methods, the ConvLSTM model demonstrated higher prediction accuracy. Additionally, the relationship between visual field series length and prediction performance was investigated. In predicting the visual field using the previous three visual field results of past 1.5~6.0 years, it was found that the ConvLSTM model performed better, achieving a mean absolute error of 2.255 dB, a root mean squared error of 3.457 dB, and a coefficient of determination of 0.960. The experimental results show that the proposed method effectively utilizes existing visual field examination results to achieve more accurate visual field prediction for the next 0.5~2.0 years. This approach holds promise in assisting clinicians in diagnosing and treating visual field progression in glaucoma patients.

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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
期刊介绍:
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