Department of Electrical and Computer Engineering, University of California San Diego, La Jolla, CA, United States of America.
Department of Bioengineering, University of California San Diego, La Jolla, CA, United States of America.
PLoS One. 2019 Oct 14;14(10):e0220315. doi: 10.1371/journal.pone.0220315. eCollection 2019.
Gastrointestinal (GI) problems give rise to 10 percent of initial patient visits to their physician. Although blockages and infections are easy to diagnose, more than half of GI disorders involve abnormal functioning of the GI tract, where diagnosis entails subjective symptom-based questionnaires or objective but invasive, intermittent procedures in specialized centers. Although common procedures capture motor aspects of gastric function, which do not correlate with symptoms or treatment response, recent findings with invasive electrical recordings show that spatiotemporal patterns of the gastric slow wave are associated with diagnosis, symptoms, and treatment response. We here consider developing non-invasive approaches to extract this information. Using CT scans from human subjects, we simulate normative and disordered gastric surface electrical activity along with associated abdominal activity. We employ Bayesian inference to solve the ill-posed inverse problem of estimating gastric surface activity from cutaneous recordings. We utilize a prior distribution on the spatiotemporal activity pertaining to sparsity in the number of wavefronts on the stomach surface, and smooth evolution of these wavefronts across time. We implement an efficient procedure to construct the Bayes optimal estimate and demonstrate its superiority compared to other commonly used inverse methods, for both normal and disordered gastric activity. Region-specific wave direction information is calculated and consistent with the simulated normative and disordered cases. We apply these methods to cutaneous multi-electrode recordings of two human subjects with the same clinical description of motor function, but different diagnosis of underlying cause. Our method finds statistically significant wave propagation in all stomach regions for both subjects, anterograde activity throughout for the subject with diabetic gastroparesis, and retrograde activity in some regions for the subject with idiopathic gastroparesis. These findings provide a further step towards towards non-invasive phenotyping of gastric function and indicate the long-term potential for enabling population health opportunities with objective GI assessment.
胃肠道(GI)问题导致 10%的患者首次就诊于他们的医生。虽然阻塞和感染很容易诊断,但超过一半的胃肠道疾病涉及胃肠道的异常功能,其中诊断需要基于主观症状的问卷或在专门中心进行的客观但有创的间歇性程序。虽然常见的程序可以捕捉胃功能的运动方面,但这些方面与症状或治疗反应无关,最近使用有创电记录的发现表明,胃慢波的时空模式与诊断、症状和治疗反应有关。我们在这里考虑开发非侵入性方法来提取这些信息。我们使用来自人体受试者的 CT 扫描,模拟正常和紊乱的胃表面电活动以及相关的腹部活动。我们利用贝叶斯推断来解决从皮肤记录估计胃表面活动的病态逆问题。我们利用关于胃表面波阵面数量稀疏的时空活动的先验分布,以及这些波阵面随时间的平滑演变。我们实施了一种有效的程序来构建贝叶斯最优估计,并证明其相对于其他常用的逆方法,对于正常和紊乱的胃活动都具有优越性。计算了区域特定的波方向信息,并且与模拟的正常和紊乱情况一致。我们将这些方法应用于两个具有相同运动功能临床描述的人体受试者的皮肤多电极记录,但潜在病因的诊断不同。我们的方法在两个受试者的所有胃区域都找到了统计学上显著的波传播,对于糖尿病性胃轻瘫的受试者,整个胃都有向前的活动,而对于特发性胃轻瘫的受试者,一些区域则有逆行活动。这些发现为非侵入性胃功能表型提供了进一步的步骤,并表明具有客观胃肠道评估的人群健康机会的长期潜力。