Department of Pathology, Jorhat medical college and hospital, Jorhat, India.
Department of Psychiatry, Lakhimpur medical college and hospital, Lakhimpur, India.
Ultrastruct Pathol. 2024 Jul 3;48(4):310-316. doi: 10.1080/01913123.2024.2362758. Epub 2024 Jun 3.
Thyroid carcinoma ranks as the 9th most prevalent global cancer, accounting for 586,202 cases and 43,636 deaths in 2020. Computerized image analysis, utilizing artificial intelligence algorithms, emerges as a potential tool for tumor evaluation.
This study aims to assess and compare chromatin textural characteristics and nuclear dimensions in follicular neoplasms through gray-level co-occurrence matrix (GLCM), fractal, and morphometric analysis.
A retrospective cross-sectional study involving 115 thyroid malignancies, specifically 49 papillary thyroid carcinomas with follicular morphology, was conducted from July 2021 to July 2023. Ethical approval was obtained, and histopathological examination, along with image analysis, was performed using ImageJ software.
A statistically significant difference was observed in contrast (2.426 (1.774-3.412) vs 2.664 (1.963-3.610), = .002), correlation (1.202 (1.071-1.298) vs 0.892 (0.833-0.946), = .01), and ASM (0.071 (0.090-0.131) vs 0.044 (0.019-0.102), = .036) between NIFTP and IFVPTC. However, morphometric parameters did not yield statistically significant differences among histological variants.
Computerized image analysis, though promising in subtype discrimination, requires further refinement and integration with traditional diagnostic parameters. The study suggests potential applications in scenarios where conventional histopathological assessment faces limitations due to limited tissue availability. Despite limitations such as a small sample size and a retrospective design, the findings contribute to understanding thyroid carcinoma characteristics and underscore the need for comprehensive evaluations integrating various diagnostic modalities.
甲状腺癌是全球第 9 大常见癌症,2020 年全球发病 586202 例,死亡 43636 例。计算机图像分析,利用人工智能算法,成为肿瘤评估的一种潜在工具。
本研究旨在通过灰度共生矩阵(GLCM)、分形和形态计量学分析,评估和比较滤泡性肿瘤的染色质纹理特征和核尺寸。
回顾性病例对照研究,纳入 2021 年 7 月至 2023 年 7 月期间的 115 例甲状腺恶性肿瘤患者,其中 49 例为具有滤泡形态的甲状腺乳头状癌。本研究获得了伦理批准,并使用 ImageJ 软件进行了组织病理学检查和图像分析。
NIFTP 和 IFVPTC 之间的对比度(2.426(1.774-3.412)与 2.664(1.963-3.610), = .002)、相关性(1.202(1.071-1.298)与 0.892(0.833-0.946), = .01)和平均灰度(ASM)(0.071(0.090-0.131)与 0.044(0.019-0.102), = .036)存在统计学差异。然而,在组织学变异体之间,形态计量参数没有统计学差异。
计算机图像分析在亚型鉴别中具有应用前景,但需要进一步完善,并与传统诊断参数相结合。该研究提示在组织可用性有限的情况下,计算机图像分析可能具有一定的应用价值。尽管存在样本量小和回顾性设计的局限性,但本研究有助于了解甲状腺癌的特征,并强调需要综合评估各种诊断方法。