Literature DB >> 27698168

Evaluation of supervised machine-learning algorithms to distinguish between inflammatory bowel disease and alimentary lymphoma in cats.

Abdullah Awaysheh1, Jeffrey Wilcke1, François Elvinger1, Loren Rees1, Weiguo Fan1, Kurt L Zimmerman2.   

Abstract

Inflammatory bowel disease (IBD) and alimentary lymphoma (ALA) are common gastrointestinal diseases in cats. The very similar clinical signs and histopathologic features of these diseases make the distinction between them diagnostically challenging. We tested the use of supervised machine-learning algorithms to differentiate between the 2 diseases using data generated from noninvasive diagnostic tests. Three prediction models were developed using 3 machine-learning algorithms: naive Bayes, decision trees, and artificial neural networks. The models were trained and tested on data from complete blood count (CBC) and serum chemistry (SC) results for the following 3 groups of client-owned cats: normal, inflammatory bowel disease (IBD), or alimentary lymphoma (ALA). Naive Bayes and artificial neural networks achieved higher classification accuracy (sensitivities of 70.8% and 69.2%, respectively) than the decision tree algorithm (63%, p < 0.0001). The areas under the receiver-operating characteristic curve for classifying cases into the 3 categories was 83% by naive Bayes, 79% by decision tree, and 82% by artificial neural networks. Prediction models using machine learning provided a method for distinguishing between ALA-IBD, ALA-normal, and IBD-normal. The naive Bayes and artificial neural networks classifiers used 10 and 4 of the CBC and SC variables, respectively, to outperform the C4.5 decision tree, which used 5 CBC and SC variables in classifying cats into the 3 classes. These models can provide another noninvasive diagnostic tool to assist clinicians with differentiating between IBD and ALA, and between diseased and nondiseased cats.
© 2016 The Author(s).

Entities:  

Keywords:  Cats; diagnosis; inflammatory bowel disease; lymphoma; machine learning

Mesh:

Year:  2016        PMID: 27698168     DOI: 10.1177/1040638716657377

Source DB:  PubMed          Journal:  J Vet Diagn Invest        ISSN: 1040-6387            Impact factor:   1.279


  1 in total

1.  Evaluation of the VETSCAN IMAGYST: an in-clinic canine and feline fecal parasite detection system integrated with a deep learning algorithm.

Authors:  Yoko Nagamori; Ruth Hall Sedlak; Andrew DeRosa; Aleah Pullins; Travis Cree; Michael Loenser; Benjamin S Larson; Richard Boyd Smith; Richard Goldstein
Journal:  Parasit Vectors       Date:  2020-07-11       Impact factor: 3.876

  1 in total

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