Laboratory of Laboratory Animal Science and Medicine, School of Veterinary Medicine, Kitasato University, 35-1, Higashi-23, Towada, Aomori 034-8628 Japan.
Exp Anim. 2024 Oct 23;73(4):370-375. doi: 10.1538/expanim.24-0001. Epub 2024 Apr 20.
Several artificial intelligence (AI) systems have been developed for glomerular pathology analysis in clinical settings. However, the application of AI systems in nonclinical fields remains limited. In this study, we trained a convolutional neural network model, which is an AI algorithm, to classify the severity of Tensin 2 (TNS2)-deficient nephropathy into seven categories. A dataset consisting of 803 glomerular images was generated from kidney sections of TNS2-deficient and wild-type mice. Manual evaluations of the images were conducted to assess their glomerular injury scores. The trained AI achieved approximately 70% accuracy in predicting the glomerular injury score for TNS2-deficient nephropathy. However, the AI achieved approximately 100% accuracy when considering predictions within one score of the true label as correct. The AI's predicted mean score closely matched the true mean score. In conclusion, while the AI model may not replace human judgment entirely, it can serve as a reliable second assessor in scoring glomerular injury, offering potential benefits in enhancing the accuracy and objectivity of such assessments.
已经开发了几种用于临床环境中肾小球病理学分析的人工智能 (AI) 系统。然而,AI 系统在非临床领域的应用仍然有限。在这项研究中,我们训练了一个卷积神经网络模型,即 AI 算法,将 Tensin 2 (TNS2) 缺陷性肾病的严重程度分为七个类别。从 TNS2 缺陷型和野生型小鼠的肾切片中生成了一个包含 803 个肾小球图像的数据集。对图像进行了手动评估,以评估其肾小球损伤评分。训练有素的 AI 在预测 TNS2 缺陷性肾病的肾小球损伤评分方面的准确率约为 70%。然而,当考虑将与真实标签相差一个分数的预测视为正确时,AI 的准确率约为 100%。AI 的预测平均分数与真实平均分数非常吻合。总之,虽然 AI 模型可能无法完全替代人类判断,但它可以作为肾小球损伤评分的可靠第二评估者,为提高此类评估的准确性和客观性提供潜在益处。