Department of Computer Science, University of California, Santa Barbara, CA, United States of America.
Department of Psychology, University of Washington, Seattle, WA, United States of America.
J Neural Eng. 2024 Mar 19;21(2). doi: 10.1088/1741-2552/ad310f.
Retinal prostheses evoke visual precepts by electrically stimulating functioning cells in the retina. Despite high variance in perceptual thresholds across subjects, among electrodes within a subject, and over time, retinal prosthesis users must undergo 'system fitting', a process performed to calibrate stimulation parameters according to the subject's perceptual thresholds. Although previous work has identified electrode-retina distance and impedance as key factors affecting thresholds, an accurate predictive model is still lacking.To address these challenges, we (1) fitted machine learning models to a large longitudinal dataset with the goal of predicting individual electrode thresholds and deactivation as a function of stimulus, electrode, and clinical parameters ('predictors') and (2) leveraged explainable artificial intelligence (XAI) to reveal which of these predictors were most important.Our models accounted for up to 76% of the perceptual threshold response variance and enabled predictions of whether an electrode was deactivated in a given trial with F1 and area under the ROC curve scores of up to 0.732 and 0.911, respectively. Our models identified novel predictors of perceptual sensitivity, including subject age, time since blindness onset, and electrode-fovea distance.Our results demonstrate that routinely collected clinical measures and a single session of system fitting might be sufficient to inform an XAI-based threshold prediction strategy, which has the potential to transform clinical practice in predicting visual outcomes.
视网膜假体通过电刺激视网膜中的功能细胞来唤起视觉感知。尽管在不同的受试者之间、在同一个受试者的电极之间以及在不同时间点,感知阈值的差异较大,但视网膜假体使用者必须进行“系统适配”,根据受试者的感知阈值来校准刺激参数。虽然之前的研究已经确定了电极-视网膜距离和阻抗是影响阈值的关键因素,但仍然缺乏准确的预测模型。为了解决这些挑战,我们 (1) 针对一个具有大量纵向数据的大型数据集进行了机器学习模型拟合,目的是预测单个电极的阈值和失活情况,其功能是根据刺激、电极和临床参数(“预测因子”);(2) 利用可解释人工智能(XAI)来揭示哪些预测因子是最重要的。我们的模型可以解释多达 76%的感知阈值响应方差,并且能够以高达 0.732 和 0.911 的 F1 和 ROC 曲线下面积分数,分别预测给定试验中电极是否失活。我们的模型还确定了感知灵敏度的新预测因子,包括受试者年龄、失明发生时间和电极-中央凹距离。我们的研究结果表明,常规收集的临床测量值和单次系统适配可能足以支持基于 XAI 的阈值预测策略,这有可能改变预测视觉结果的临床实践。