Department of Computing and Mathematics, University of São Paulo, Ribeirão Preto, SP, Brazil.
Nuclear and Energy Research Institute, São Paulo, SP, Brazil.
Comput Methods Programs Biomed. 2024 Apr;247:108100. doi: 10.1016/j.cmpb.2024.108100. Epub 2024 Feb 24.
The thyroid is a gland responsible for producing important body hormones. Several pathologies can affect this gland, such as thyroiditis, hypothyroidism, and thyroid cancer. The visual histological analysis of thyroid specimens is a valuable process that enables pathologists to detect diseases with high efficiency, providing the patient with a better prognosis. Existing computer vision systems developed to aid in the analysis of histological samples have limitations in distinguishing pathologies with similar characteristics or samples containing multiple diseases. To overcome this challenge, hyperspectral images are being studied to represent biological samples based on their molecular interaction with light.
In this study, we address the acquisition of infrared absorbance spectra from each voxel of histological specimens. This data is then used for the development of a multiclass fully-connected neural network model that discriminates spectral patterns, enabling the classification of voxels as healthy, cancerous, or goiter.
Through experiments using the k-fold cross-validation protocol, we obtained an average accuracy of 93.66 %, a sensitivity of 93.47 %, and a specificity of 96.93 %. Our results demonstrate the feasibility of using infrared hyperspectral imaging to characterize healthy tissue and thyroid pathologies using absorbance measurements. The proposed deep learning model has the potential to improve diagnostic efficiency and enhance patient outcomes.
甲状腺是产生重要身体激素的腺体。几种病理学可以影响这个腺体,如甲状腺炎、甲状腺功能减退症和甲状腺癌。甲状腺标本的可视化组织学分析是一种有价值的过程,使病理学家能够以高效率检测疾病,为患者提供更好的预后。现有的开发用于辅助组织学样本分析的计算机视觉系统在区分具有相似特征的病理学或包含多种疾病的样本方面存在局限性。为了克服这一挑战,正在研究高光谱图像,以根据生物样本与光的分子相互作用来表示它们。
在这项研究中,我们解决了从组织学标本的每个体素获取红外吸收光谱的问题。然后,将这些数据用于开发一个多类全连接神经网络模型,该模型可以区分光谱模式,从而将体素分类为健康、癌症或甲状腺肿。
通过使用 k 折交叉验证协议进行的实验,我们获得了平均准确率为 93.66%、灵敏度为 93.47%和特异性为 96.93%。我们的结果表明,使用红外高光谱成像技术通过吸收测量来描述健康组织和甲状腺病理学是可行的。所提出的深度学习模型有可能提高诊断效率并改善患者的预后。