Combining ultrasound radiomics, complete blood count, and serum biochemical biomarkers for diagnosing intestinal disorders in cats using machine learning

Author:

Basran Parminder S.12ORCID,Shcherban Natalya1,Forman Marnin3,Chang Jasmine1,Nelissen Sophie4,Recchia Benjamin K.5,Porter Ian R.1

Affiliation:

1. Department of Clinical Sciences College of Veterinary Medicine Cornell University Ithaca New York USA

2. Department of Biological Sciences College of Veterinary Medicine Cornell University Ithaca New York USA

3. Cornell University Veterinary Specialists Stamford Connecticut USA

4. Department of Biomedical Sciences Section of Anatomic Pathology College of Veterinary Medicine Cornell University Ithaca New York USA

5. Affectionately Cats Veterinary Hospital Williston Vermont USA

Abstract

AbstractThis retrospective analytical observational cohort study aimed to model and predict the classification of feline intestinal diseases from segmentations of a transverse section from small intestine ultrasound (US) image, complete blood count (CBC), and serum biochemical profile data using a variety of machine‐learning approaches. In 149 cats from three institutions, images were obtained from cats with biopsy‐confirmed small cell epitheliotropic lymphoma (lymphoma), inflammatory bowel disease (IBD), no pathology (“healthy”), and other conditions (warrant a biopsy for further diagnosis). CBC, blood serum chemistry, small intestinal ultrasound, and small intestinal biopsy were obtained within a 2‐week interval. CBC and serum biomarkers and radiomic features were combined for modeling. Four classification schemes were investigated: (1) normal versus abnormal; (2) warranting or not warranting a biopsy; (3) lymphoma, IBD, healthy, or other conditions; and (4) lymphoma, IBD, or other conditions. Two feature selection methods were used to identify the top 3, 5, 10, and 20 features, and six machine learning models were trained. The average (95% CI) performance of models for all combinations of features, numbers of features, and types of classifiers was 0.886 (0.871–0.912) for Model 1 (normal vs. abnormal), 0.751 (0.735–0.818) for Model 2 (biopsy vs. no biopsy), 0.504 (0.450–0.556) for Model 3 (lymphoma, IBD, healthy, or other), and 0.531 (0.426–0.589), for Model 4 (lymphoma, IBD, or other). Our findings suggest model accuracies above 0.85 can be achieved in Model 1 and 2, and that including CBC and biochemistry data with US radiomics data did not significantly improve accuracy in our models.

Funder

Cornell Feline Health Center

Publisher

Wiley

Subject

General Veterinary

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Artificial Intelligence in Diagnostic Imaging;Advances in Small Animal Care;2024-07

2. Artificial intelligence in veterinary diagnostics;Companion Animal;2024-06-01

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