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Peer-reviewed veterinary case report

AI ultrasound helps classify chronic kidney disease in dogs

By Yu, Heejung et al.·Published in Frontiers in veterinary science·2024·Department of Veterinary Medical Imaging, South Korea·View original on PubMed

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Original publication title: Deep learning-based ultrasonographic classification of canine chronic kidney disease.

Species:
dog

Plain-English summary

A study found that a deep learning model could help classify chronic kidney disease (CKD) stages in dogs using ultrasound images. The model was tested on images from 198 dogs, including those with CKD and healthy ones. While the model had low accuracy in identifying all stages, it performed well in distinguishing more severe stages (3 and 4), achieving an accuracy of 85%. This AI tool outperformed veterinary imaging specialists in accuracy, suggesting it could be a useful aid for diagnosing CKD in dogs.

People also search for: dog kidney disease ultrasound · chronic kidney disease stages in dogs · AI for dog health diagnosis

Abstract

OBJECTIVES: In veterinary medicine, attempts to apply artificial intelligence (AI) to ultrasonography have rarely been reported, and few studies have investigated the value of AI in ultrasonographic diagnosis. This study aimed to develop a deep learning-based model for classifying the status of canine chronic kidney disease (CKD) using renal ultrasonographic images and assess its diagnostic performance in comparison with that of veterinary imaging specialists, thereby verifying its clinical utility. MATERIALS AND METHODS: In this study, 883 ultrasonograms were obtained from 198 dogs, including those diagnosed with CKD according to the International Renal Interest Society (IRIS) guidelines and healthy dogs. After preprocessing and labeling each image with its corresponding IRIS stage, the renal regions were extracted and classified based on the IRIS stage using the convolutional neural network-based object detection algorithm You Only Look Once. The training scenarios consisted of multi-class classification, categorization of images into IRIS stages, and four binary classifications based on specific IRIS stages. To prevent model overfitting, we balanced the dataset, implemented early stopping, used lightweight models, and applied dropout techniques. Model performance was assessed using accuracy, recall, precision, F1 score, and receiver operating characteristic curve and compared with the diagnostic accuracy of four specialists. Inter- and intra-observer variabilities among specialists were also evaluated. RESULTS: The developed model exhibited a low accuracy of 0.46 in multi-class classification. However, a significant performance improvement was observed in binary classifications, with the model designed to distinguish stage 3 or higher showing the highest accuracy of 0.85. In this classification, recall, precision, and F1 score values were all 0.85, and the area under the curve was 0.89. Compared with radiologists, whose accuracy ranged from 0.48 to 0.62 in this experimental scenario, the AI model exhibited superiority. Intra-observer reliability among radiologists was substantial, whereas inter-observer variability showed a moderate level of agreement. CONCLUSIONS: This study developed a deep-learning framework capable of reliably classifying CKD IRIS stages 3 and 4 in dogs using ultrasonograms. The developed framework demonstrated higher accuracy than veterinary imaging specialists and provided more objective and consistent interpretations. Therefore, deep-learning-based ultrasound diagnostics are potentially valuable tools for diagnosing CKD in dogs.

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Original publication on PubMed: https://pubmed.ncbi.nlm.nih.gov/39296582/