甲状腺乳头状癌的光谱表型辅助诊断。

IF 3.7 Q2 GENETICS & HEREDITY Phenomics (Cham, Switzerland) Pub Date : 2023-08-13 eCollection Date: 2023-10-01 DOI:10.1007/s43657-023-00113-1
Bailiang Zhao, Yan Wang, Menghan Hu, Yue Wu, Jiannan Liu, Qingli Li, Min Dai, Wendell Q Sun, Guangtao Zhai
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引用次数: 0

摘要

甲状腺癌症是常见的内分泌恶性肿瘤,是内分泌肿瘤死亡的主要原因之一。病理切片分析的诊断存在诊断延迟和繁琐的操作程序。因此,我们打算基于光谱数据构建模型,该模型可用于术中甲状腺乳头状癌(PTC)的快速诊断并表征PTC特征。为了缓解病理学家对使用该模型的任何担忧,我们对所用的带进行了分析,这些带可以进行病理学解释。首先建立了一个光谱采集系统来采集91例患者的病理切片图像的光谱。所获得的光谱数据集包含217个正常甲状腺组织的光谱和217个PTC组织的光谱。收集相应患者的临床数据,用于随后的模型可解释性分析。该实验已获得华东师范大学芜湖医院伦理审查委员会的批准。使用光谱预处理方法对光谱进行处理,并使用分别通过第一和第二信息波长选择优化的预处理信号来建立PTC检测模型。使用平均中心(MC)和多次散射校正(MSC)的PTC检测模型具有最佳性能,并结合光谱采集过程和测试片的组成分析了性能良好的原因。对于模型可解释性分析,选择用于建模的近紫外线波段对应于氨基酸吸收峰的位置,这与PTC患者中氨基酸浓度显著降低的临床现象一致。此外,选择用于建模的血红蛋白吸收峰与PTC患者的低血红蛋白指数一致。此外,对所选波长与临床数据进行了相关性分析,结果表明:正常细胞中所选波长的反射强度与细胞排列结构、细胞核大小和游离甲状腺素(FT4)具有中等相关性,与三碘甲状腺原氨酸(T3)具有强相关性;PTC细胞中所选条带的反射强度与游离三碘甲状腺原氨酸(FT3)具有中等相关性。
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Auxiliary Diagnosis of Papillary Thyroid Carcinoma Based on Spectral Phenotype.

Thyroid cancer, a common endocrine malignancy, is one of the leading death causes among endocrine tumors. The diagnosis of pathological section analysis suffers from diagnostic delay and cumbersome operating procedures. Therefore, we intend to construct the models based on spectral data that can be potentially used for rapid intraoperative papillary thyroid carcinoma (PTC) diagnosis and characterize PTC characteristics. To alleviate any concerns pathologists may have about using the model, we conducted an analysis of the used bands that can be interpreted pathologically. A spectra acquisition system was first built to acquire spectra of pathological section images from 91 patients. The obtained spectral dataset contains 217 spectra of normal thyroid tissue and 217 spectra of PTC tissue. Clinical data of the corresponding patients were collected for subsequent model interpretability analysis. The experiment has been approved by the Ethics Review Committee of the Wuhu Hospital of East China Normal University. The spectral preprocessing method was used to process the spectra, and the preprocessed signal respectively optimized by the first and secondary informative wavelengths selection was used to develop the PTC detection models. The PTC detection model using mean centering (MC) and multiple scattering correction (MSC) has optimal performance, and the reasons for the good performance were analyzed in combination with the spectral acquisition process and composition of the test slide. For model interpretable analysis, the near-ultraviolet band selected for modeling corresponds to the location of amino acid absorption peak, and this is consistent with the clinical phenomenon of significantly lower amino acid concentrations in PTC patients. Moreover, the absorption peak of hemoglobin selected for modeling is consistent with the low hemoglobin index in PTC patients. In addition, the correlation analysis was performed between the selected wavelengths and the clinical data, and the results show: the reflection intensity of selected wavelengths in normal cells has a moderate correlation with cell arrangement structure, nucleus size and free thyroxine (FT4), and has a strong correlation with triiodothyronine (T3); the reflection intensity of selected bands in PTC cells has a moderate correlation with free triiodothyronine (FT3).

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