Achalasia subtypes can be identified with functional luminal imaging probe (FLIP) panometry using a supervised machine learning process

Neurogastroenterol Motil. 2021 Mar;33(3):e13932. doi: 10.1111/nmo.13932. Epub 2020 Jul 1.

Abstract

Background: Achalasia subtypes on high-resolution manometry (HRM) prognosticate treatment response and help direct management plan. We aimed to utilize parameters of distension-induced contractility and pressurization on functional luminal imaging probe (FLIP) panometry and machine learning to predict HRM achalasia subtypes.

Methods: One hundred eighty adult patients with treatment-naïve achalasia defined by HRM per Chicago Classification (40 type I, 99 type II, 41 type III achalasia) who underwent FLIP panometry were included: 140 patients were used as the training cohort and 40 patients as the test cohort. FLIP panometry studies performed with 16-cm FLIP assemblies were retrospectively analyzed to assess distensive pressure and distension-induced esophageal contractility. Correlation analysis, single tree, and random forest were adopted to develop classification trees to identify achalasia subtypes.

Key results: Intra-balloon pressure at 60 mL fill volume, and proportions of patients with absent contractile response, repetitive retrograde contractile pattern, occluding contractions, sustained occluding contractions (SOC), contraction-associated pressure changes >10 mm Hg all differed between HRM achalasia subtypes and were used to build the decision tree-based classification model. The model identified spastic (type III) vs non-spastic (types I and II) achalasia with 90% and 78% accuracy in the train and test cohorts, respectively. Achalasia subtypes I, II, and III were identified with 71% and 55% accuracy in the train and test cohorts, respectively.

Conclusions and inferences: Using a supervised machine learning process, a preliminary model was developed that distinguished type III achalasia from non-spastic achalasia with FLIP panometry. Further refinement of the measurements and more experience (data) may improve its ability for clinically relevant application.

Keywords: dysphagia; endoscopy; impedance; manometry; peristalsis.

Publication types

  • Research Support, N.I.H., Extramural
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Adult
  • Aged
  • Diagnostic Techniques, Digestive System*
  • Electric Impedance
  • Endoscopy, Digestive System
  • Esophageal Achalasia / classification
  • Esophageal Achalasia / diagnosis*
  • Esophageal Achalasia / diagnostic imaging
  • Esophageal Achalasia / physiopathology
  • Esophagus / pathology
  • Esophagus / physiopathology*
  • Female
  • Humans
  • Male
  • Manometry
  • Middle Aged
  • Organ Size
  • Supervised Machine Learning*