Diagnosis and classification of portosystemic shunts: a machine learning retrospective case-control study.

Front Vet Sci

Department of Surgical and Radiological Sciences, School of Veterinary Medicine, University of California, Davis, Davis, CA, United States.

Published: April 2024

AI Article Synopsis

  • The study aimed to create a machine learning model to diagnose portosystemic shunts (PSS) in dogs using normal demographic and clinicopathologic data, addressing the limitations of current diagnostic tests.
  • The machine learning models developed included one to predict whether a dog has PSS and another to categorize the type of PSS, achieving high accuracy rates (94.3% sensitivity for PSS detection and 85.7% accuracy for subtype classification).
  • These models can serve as effective screening tools to help veterinarians decide when to proceed with more advanced diagnostic techniques.

Article Abstract

Diagnosis of portosystemic shunts (PSS) in dogs often requires multiple diagnostic tests, and available clinicopathologic tests have limitations in sensitivity and specificity. The objective of this study was to train and validate a machine learning model (MLM) that can accurately predict the presence of a PSS utilizing routinely collected demographic data and clinicopathologic features. Dogs diagnosed with PSS or control dogs tested for PSS but had the condition ruled out (non-PSS) were identified. Dogs were included if a complete blood count and serum chemistry panel were available from PSS diagnostic testing. Dogs with a PSS were subcategorized as having a single intrahepatic PSS, a single extrahepatic PSS, or multiple extrahepatic PSS. An extreme gradient boosting (XGboost) MLM was trained with data from 70% of the cases, and MLM performance was determined on the test set, comprising the remaining 30% of the case data. Two MLMs were created. The first was designed to predict the presence of any PSS (PSS MLM), and the second to predict the PSS subcategory (PSS SubCat MLM). The trained PSS MLM had a sensitivity of 94.3% (95% CI 90.1-96.8%) and specificity of 90.5% (95% CI 85.32-94.0%) for dogs in the test set. The area under the receiver operator characteristic curve (AUC) was 0.976 (95% CI; 0.964-0.989). The mean corpuscular hemoglobin, lymphocyte count, and serum globulin concentration were most important in prediction classification. The PSS SubCat MLM had an accuracy of 85.7% in determining the subtype of PSS of dogs in the test set, with variable sensitivity and specificity depending on PSS subtype. These MLMs have a high accuracy for diagnosing PSS; however, the prediction of PSS subclassification is less accurate. The MLMs can be used as a screening tool to increase or decrease the index of suspicion for PSS before confirmatory diagnostics such as advanced imaging are pursued.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11024426PMC
http://dx.doi.org/10.3389/fvets.2024.1291318DOI Listing

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