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通过尿液荧光代谢组学图谱监测和机器学习算法进行非侵入性子宫内膜癌筛查

Non-Invasive Endometrial Cancer Screening through Urinary Fluorescent Metabolome Profile Monitoring and Machine Learning Algorithms.

作者信息

Švecová Monika, Dubayová Katarína, Birková Anna, Urdzík Peter, Mareková Mária

机构信息

Department of Medical and Clinical Biochemistry, Faculty of Medicine, Pavol Jozef Šafárik University in Košice, Tr. SNP, 104001 Košice, Slovakia.

Department of Gynaecology and Obstetrics, Faculty of Medicine, Pavol Jozef Šafárik University in Košice, Tr. SNP, 104001 Košice, Slovakia.

出版信息

Cancers (Basel). 2024 Sep 14;16(18):3155. doi: 10.3390/cancers16183155.

Abstract

Endometrial cancer is becoming increasingly common, highlighting the need for improved diagnostic methods that are both effective and non-invasive. This study investigates the use of urinary fluorescence spectroscopy as a potential diagnostic tool for endometrial cancer. Urine samples were collected from endometrial cancer patients ( = 77), patients with benign uterine tumors ( = 23), and control gynecological patients attending regular checkups or follow-ups ( = 96). These samples were analyzed using synchronous fluorescence spectroscopy to measure the total fluorescent metabolome profile, and specific fluorescence ratios were created to differentiate between control, benign, and malignant samples. These spectral markers demonstrated potential clinical applicability with AUC as high as 80%. Partial Least Squares Discriminant Analysis (PLS-DA) was employed to reduce data dimensionality and enhance class separation. Additionally, machine learning models, including Random Forest (RF), Logistic Regression (LR), Support Vector Machine (SVM), and Stochastic Gradient Descent (SGD), were utilized to distinguish between controls and endometrial cancer patients. PLS-DA achieved an overall accuracy of 79% and an AUC of 90%. These promising results indicate that urinary fluorescence spectroscopy, combined with advanced machine learning models, has the potential to revolutionize endometrial cancer diagnostics, offering a rapid, accurate, and non-invasive alternative to current methods.

摘要

子宫内膜癌正变得越来越常见,这凸显了对有效且非侵入性的改进诊断方法的需求。本研究调查了尿荧光光谱法作为子宫内膜癌潜在诊断工具的应用。从子宫内膜癌患者(n = 77)、患有良性子宫肿瘤的患者(n = 23)以及接受定期检查或随访的妇科对照患者(n = 96)中收集尿液样本。使用同步荧光光谱法分析这些样本,以测量总荧光代谢组谱,并创建特定的荧光比率以区分对照、良性和恶性样本。这些光谱标志物显示出高达80%的曲线下面积(AUC),具有潜在的临床适用性。采用偏最小二乘判别分析(PLS - DA)来降低数据维度并增强类别分离。此外,利用包括随机森林(RF)、逻辑回归(LR)、支持向量机(SVM)和随机梯度下降(SGD)在内的机器学习模型来区分对照患者和子宫内膜癌患者。PLS - DA的总体准确率达到79%,AUC为90%。这些有前景的结果表明,尿荧光光谱法与先进的机器学习模型相结合,有可能彻底改变子宫内膜癌的诊断方式,为当前方法提供一种快速、准确且非侵入性的替代方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b296/11429905/9239ab1067db/cancers-16-03155-g001.jpg

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