College of Physical Science and Technology, Guangxi Normal University, Guilin, Guangxi 541004, China.
Department of Gastroenterology, The Affiliated Hospital of South University of Science and Technology, Shenzhen 518000, Guangdong Province, China.
World J Gastroenterol. 2024 Mar 14;30(10):1377-1392. doi: 10.3748/wjg.v30.i10.1377.
Crohn's disease (CD) is often misdiagnosed as intestinal tuberculosis (ITB). However, the treatment and prognosis of these two diseases are dramatically different. Therefore, it is important to develop a method to identify CD and ITB with high accuracy, specificity, and speed.
To develop a method to identify CD and ITB with high accuracy, specificity, and speed.
A total of 72 paraffin wax-embedded tissue sections were pathologically and clinically diagnosed as CD or ITB. Paraffin wax-embedded tissue sections were attached to a metal coating and measured using attenuated total reflectance fourier transform infrared spectroscopy at mid-infrared wavelengths combined with XGBoost for differential diagnosis.
The results showed that the paraffin wax-embedded specimens of CD and ITB were significantly different in their spectral signals at 1074 cm and 1234 cm bands, and the differential diagnosis model based on spectral characteristics combined with machine learning showed accuracy, specificity, and sensitivity of 91.84%, 92.59%, and 90.90%, respectively, for the differential diagnosis of CD and ITB.
Information on the mid-infrared region can reveal the different histological components of CD and ITB at the molecular level, and spectral analysis combined with machine learning to establish a diagnostic model is expected to become a new method for the differential diagnosis of CD and ITB.
克罗恩病(CD)常被误诊为肠结核(ITB)。然而,这两种疾病的治疗和预后截然不同。因此,开发一种准确、特异、快速的方法来鉴别 CD 和 ITB 非常重要。
开发一种准确、特异、快速的方法来鉴别 CD 和 ITB。
共选取 72 例经病理和临床诊断为 CD 或 ITB 的石蜡包埋组织切片。将石蜡包埋组织切片粘贴在金属涂层上,采用中红外衰减全反射傅里叶变换光谱技术结合 XGBoost 对其进行检测,以进行差异诊断。
结果显示,在 1074cm 和 1234cm 波段,CD 和 ITB 的石蜡包埋标本在光谱信号上存在显著差异,基于光谱特征结合机器学习的差异诊断模型对 CD 和 ITB 的鉴别诊断具有 91.84%、92.59%和 90.90%的准确性、特异性和敏感性。
中红外区域的信息可以在分子水平上揭示 CD 和 ITB 的不同组织学成分,光谱分析结合机器学习建立诊断模型有望成为 CD 和 ITB 鉴别诊断的新方法。