Enhancing Chicago Classification diagnoses with functional lumen imaging probe—mechanics (FLIP‐MECH)

Author:

Halder Sourav1ORCID,Yamasaki Jun2ORCID,Liu Xinyi3,Carlson Dustin A.1ORCID,Kou Wenjun1ORCID,Kahrilas Peter J.1ORCID,Pandolfino John E.1,Patankar Neelesh A.2ORCID

Affiliation:

1. Kenneth C. Griffin Esophageal Center of Northwestern Medicine, Division of Gastroenterology and Hepatology, Department of Medicine, Feinberg School of Medicine Northwestern University Chicago Illinois USA

2. Department of Mechanical Engineering, McCormick School of Engineering Northwestern University Evanston Illinois USA

3. Department of Engineering Sciences and Applied Mathematics, McCormick School of Engineering Northwestern University Evanston Illinois USA

Abstract

AbstractBackgroundEsophageal motility disorders can be diagnosed by either high‐resolution manometry (HRM) or the functional lumen imaging probe (FLIP) but there is no systematic approach to synergize the measurements of these modalities or to improve the diagnostic metrics that have been developed to analyze them. This work aimed to devise a formal approach to bridge the gap between diagnoses inferred from HRM and FLIP measurements using deep learning and mechanics.MethodsThe “mechanical health” of the esophagus was analyzed in 740 subjects including a spectrum of motility disorder patients and normal subjects. The mechanical health was quantified through a set of parameters including wall stiffness, active relaxation, and contraction pattern. These parameters were used by a variational autoencoder to generate a parameter space called virtual disease landscape (VDL). Finally, probabilities were assigned to each point (subject) on the VDL through linear discriminant analysis (LDA), which in turn was used to compare with FLIP and HRM diagnoses.ResultsSubjects clustered into different regions of the VDL with their location relative to each other (and normal) defined by the type and severity of dysfunction. The two major categories that separated best on the VDL were subjects with normal esophagogastric junction (EGJ) opening and those with EGJ obstruction. Both HRM and FLIP diagnoses correlated well within these two groups.ConclusionMechanics‐based parameters effectively estimated esophageal health using FLIP measurements to position subjects in a 3‐D VDL that segregated subjects in good alignment with motility diagnoses gleaned from HRM and FLIP studies.

Funder

National Institute of Diabetes and Digestive and Kidney Diseases

National Science Foundation

Publisher

Wiley

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