Literature DB >> 22620696

Analysis of clinical and ultrasonographic data by use of logistic regression models for prediction of malignant versus benign causes of ultrasonographically detected focal liver lesions in dogs.

Tsuyoshi Murakami1, Daniel A Feeney, Katherine L Bahr.   

Abstract

OBJECTIVE: To investigate the value of clinical, laboratory, and imaging data for use in predicting malignant or benign histologic results for ultrasonographically detected focal liver lesions in dogs. SAMPLE: Records and archived images of 247 dogs evaluated at the University of Minnesota Veterinary Medical Center from 2005 to 2008 that underwent abdominal ultrasonography and histologic evaluation of the liver. PROCEDURES: Data were analyzed with multivariable logistic regression models. All dogs were classified as having benign or malignant liver disease on the basis of histologic reports. Three multivariable logistic regression models were fit to a development subset of the data by use of combinations of signalment, historical, physical examination, laboratory, and diagnostic imaging (survey radiography and abdominal ultrasonography) data as predictor variables. The resulting models were validated by evaluating predictive performance against a holdout validation subset of the data.
RESULTS: Models that included ultrasonographic variables had the highest overall predictive value. In these models, greater lesion size and the presence of peritoneal fluid were the only variables that had a positive association with malignant liver disease. CONCLUSIONS AND CLINICAL RELEVANCE: Large ultrasonographically detected liver lesions and the presence of peritoneal fluid were associated with malignant liver disease in dogs.

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Year:  2012        PMID: 22620696     DOI: 10.2460/ajvr.73.6.821

Source DB:  PubMed          Journal:  Am J Vet Res        ISSN: 0002-9645            Impact factor:   1.156


  3 in total

1.  Computed tomographic features for differentiating benign from malignant liver lesions in dogs.

Authors:  Rommaneeya Leela-Arporn; Hiroshi Ohta; Genya Shimbo; Kiwamu Hanazono; Tatsuyuki Osuga; Keitaro Morishita; Noboru Sasaki; Mitsuyoshi Takiguchi
Journal:  J Vet Med Sci       Date:  2019-10-10       Impact factor: 1.267

2.  Predicting Diagnosis of Australian Canine and Feline Urinary Bladder Disease Based on Histologic Features.

Authors:  Emily Jones; John Alawneh; Mary Thompson; Chiara Palmieri; Karen Jackson; Rachel Allavena
Journal:  Vet Sci       Date:  2020-11-27

3.  Evaluation of a Probability-Based Predictive Tool on Pathologist Agreement Using Urinary Bladder as a Pilot Tissue.

Authors:  Emily Jones; Solomon Woldeyohannes; Fernanda Castillo-Alcala; Brandon N Lillie; Mee-Ja M Sula; Helen Owen; John Alawneh; Rachel Allavena
Journal:  Vet Sci       Date:  2022-07-18
  3 in total

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