使用 SAM 算法分析β-榄香烯干预对化学药物引起的舌头损伤的疗效。

IF 0.8 4区 农林科学 Q4 ANATOMY & MORPHOLOGY
Feng Liu, Qinlong Zhang, Weijie Zhang, Deqiang Cheng, Feng Zhang, Yating Deng, Guanzhen Yu
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引用次数: 0

摘要

我们设计了一个人工智能(AI)模型,以协助病理学家诊断和量化化学致癌物诱发的舌病变的结构变化。利用由 4-硝基喹啉-N-氧化物诱发并经 β-榄香烯处理的舌癌模型,共处理了 183 张数字病理切片。初步分割时使用了 "任意分割模型"(SAM),然后使用传统算法进行更详细的分割。使用 OpenCV 的 findcontour 方法计算上皮轮廓区域,并使用 skeletonize 方法计算距离图和骨架化表示。人工智能模型在测量舌上皮厚度和乳头状突起数量方面表现出很高的准确性。结果表明,与空白组相比,模型组的上皮厚度明显增加,乳头数量明显减少。此外,与模型组相比,治疗组的上皮厚度和乳头状突起数量均有所减少,但差异并不明显。总之,SAM 框架算法在量化舌上皮厚度和乳头状突起数量方面证明是有效的,从而有助于医疗专业人员了解病理变化和评估治疗效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An analysis on efficacy of applying β-elemene intervention on chemically -induced tongue lesions using SAM algorithm

An artificial intelligence (AI) model was designed to assist pathologists in diagnosing and quantifying structural changes in tongue lesions induced by chemical carcinogens. Using a tongue cancer model induced by 4-nitroquinoline-N-oxide and treated with β-elemene, a total of 183 digital pathology slides were processed. The Segment Anything Model (SAM) was employed for initial segmentation, followed by conventional algorithms for more detailed segmentation. The epithelial contour area was computed using OpenCV's findcontour method, and the skeletonize method was used to calculate the distance map and skeletonized representation. The AI model demonstrated high accuracy in measuring tongue epithelial thickness and the number of papilla-like protrusions. Results indicated that the model group had significantly higher epithelial thickness and fewer papillae compared with the blank group. Furthermore, the treatment group exhibited reduced epithelial thickness and fewer papilla-like protrusions compared with the model group, though these differences were less pronounced. Overall, the SAM framework algorithm proved effective in quantifying tongue epithelial thickness and the number of papilla-like protrusions, thereby assisting healthcare professionals in understanding pathological changes and assessing treatment outcomes.

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来源期刊
Anatomia Histologia Embryologia
Anatomia Histologia Embryologia ANATOMY & MORPHOLOGY-VETERINARY SCIENCES
CiteScore
1.90
自引率
11.10%
发文量
115
审稿时长
18-36 weeks
期刊介绍: Anatomia, Histologia, Embryologia is a premier international forum for the latest research on descriptive, applied and clinical anatomy, histology, embryology, and related fields. Special emphasis is placed on the links between animal morphology and veterinary and experimental medicine, consequently studies on clinically relevant species will be given priority. The editors welcome papers on medical imaging and anatomical techniques. The journal is of vital interest to clinicians, zoologists, obstetricians, and researchers working in biotechnology. Contributions include reviews, original research articles, short communications and book reviews.
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