Diagnosis of Hirschsprung disease by analyzing acetylcholinesterase staining using artificial intelligence

Author:

Braun Yannick1ORCID,Friedmacher Florian1,Theilen Till‐Martin1,Fiegel Henning C.1,Weber Katharina2345,Harter Patrick N.26,Rolle Udo1

Affiliation:

1. Department of Pediatric Surgery and Pediatric Urology University Hospital Frankfurt, Goethe‐University Frankfurt am Main Germany

2. Neurological Institute, Edinger Institute, Neuropathology, Goethe University Frankfurt am Main Germany

3. German Cancer Consortium (DKTK), Partner Site Frankfurt, German Cancer Research Center (DKFZ) Heidelberg Germany

4. Frankfurt Cancer Institute (FCI) Frankfurt am Main Germany

5. Center for Tumor Diseases University Hospital Frankfurt, Goethe University Frankfurt am Main Germany

6. Centre for Neuropathology and Prion‐Research Ludwig‐Maximilians‐Universität München München Germany

Abstract

AbstractObjectivesClassical Hirschsprung disease (HD) is defined by the absence of ganglion cells in the rectosigmoid colon. The diagnosis is made from rectal biopsy, which reveals the aganglionosis and the presence of cholinergic hyperinnervation. However, depending on the method of rectal biopsy, the quality of the specimens and the related diagnostic accuracy varies substantially. To facilitate and objectify the diagnosis of HD, we investigated whether software‐based identification of cholinergic hyperinnervation in digitalized histopathology slides is suitable for distinguishing healthy individuals from affected individuals.MethodsN = 190 samples of 112 patients who underwent open surgical rectal biopsy at our pediatric surgery center between 2009 and 2019 were included in this study. Acetylcholinesterase (AChE) stained slides of these samples were collected and digitalized via slide scanning and analyzed using two digital imaging software programs (HALO, QuPath). The AChE‐positive staining area in the mucosal layers of the intestinal wall was determined. In the next step machine learning was employed to identify patterns of cholinergic hyperinnervation.ResultsThe area of AChE‐positive staining was greater in HD patients compared to healthy individuals (p < 0.0001). Artificial intelligence‐based assessment of parasympathetic hyperinnervation identified HD with a high precision (area under the curve [AUC] 0.96). The accuracy of the prediction model increased when nonrectal samples were excluded (AUC 0.993).ConclusionsSoftware‐assisted machine‐learning analysis of AChE staining is suitable to improve the diagnostic accuracy of HD.

Publisher

Wiley

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