Detection of canine external ear canal lesions using artificial intelligence.

IF 1.9 3区 农林科学 Q3 DERMATOLOGY
Neoklis Apostolopoulos, Samuel Murray, Srikanth Aravamuthan, Dörte Döpfer
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引用次数: 0

Abstract

Background: Early and accurate diagnosis of otitis externa is crucial for correct management yet can often be challenging. Artificial intelligence (AI) is a valuable diagnostic tool in human medicine. Currently, no such tool is available in veterinary dermatology/otology.

Objectives: As a proof-of-concept, we developed and evaluated a novel YOLOv5 object detection model for identifying healthy ear canals, otitis or masses in the canine ear canal.

Animals: Digital images of ear canals from dogs with healthy ears, otitis and masses in the ear canal were used.

Materials and methods: Four variants of the YOLOv5 model were trained, each using a different training dataset. The prediction performance metrics used to evaluate them include F1/confidence-curves, mean average precision (mAP50), precision (P), recall (R) and average precision (AP) for accuracy. These are quantifiable performance metrics used to evaluate the efficacy of each variant.

Results: All four variants were capable of detecting and classifying the ear canal. However, training datasets with many duplicates (A and C) inflated performance metrics as a consequence of data leakage, potentially compromising their effectiveness on unseen images. Additionally, larger datasets (without duplicates) demonstrated superior performance metrics compared to model variants trained on smaller datasets (without duplicates).

Conclusions and clinical relevance: This novel AI object detection model has the potential for application in the field of veterinary dermatology. An external validation study is needed prior to clinical deployment.

利用人工智能检测犬外耳道病变。
背景:外耳炎的早期准确诊断对正确治疗至关重要,但往往具有挑战性。人工智能(AI)是人类医学中有价值的诊断工具。目前,兽医皮肤科/耳科还没有这样的工具。目的:作为概念验证,我们开发并评估了一种新的YOLOv5目标检测模型,用于识别健康耳道、中耳炎或犬耳道肿块。动物:使用健康耳朵、中耳炎和耳道肿块狗的耳道数字图像。材料和方法:对YOLOv5模型的四个变体进行了训练,每个变体使用不同的训练数据集。用于评估它们的预测性能指标包括F1/置信度曲线、平均平均精度(mAP50)、精度(P)、召回率(R)和准确性的平均精度(AP)。这些是可量化的性能指标,用于评估每个变体的功效。结果:四种变异均能对耳道进行检测和分类。然而,由于数据泄漏,具有许多重复(A和C)的训练数据集夸大了性能指标,潜在地损害了它们在未见过的图像上的有效性。此外,与在较小的数据集(没有重复)上训练的模型变体相比,较大的数据集(没有重复)显示出更好的性能指标。结论及临床意义:该新型人工智能目标检测模型在兽医皮肤医学领域具有应用潜力。在临床应用之前需要进行外部验证研究。
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来源期刊
Veterinary dermatology
Veterinary dermatology 农林科学-兽医学
CiteScore
3.20
自引率
21.40%
发文量
92
审稿时长
12-24 weeks
期刊介绍: Veterinary Dermatology is a bi-monthly, peer-reviewed, international journal which publishes papers on all aspects of the skin of mammals, birds, reptiles, amphibians and fish. Scientific research papers, clinical case reports and reviews covering the following aspects of dermatology will be considered for publication: -Skin structure (anatomy, histology, ultrastructure) -Skin function (physiology, biochemistry, pharmacology, immunology, genetics) -Skin microbiology and parasitology -Dermatopathology -Pathogenesis, diagnosis and treatment of skin diseases -New disease entities
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