Vigo Francesco, Tozzi Alessandra, Lombardo Flavio C, Eugster Muriel, Kavvadias Vasileios, Brogle Rahel, Rigert Julia, Heinzelmann-Schwarz Viola, Kavvadias Tilemachos
Department of Biomedicine, University of Basel, Basel, Switzerland.
Department of Gynecology, Clinic for Gynecology and Gynecologic Oncology, University Hospital of Basel, Spitalstrasse 21, 4055, Basel, Switzerland.
Clin Exp Med. 2025 May 9;25(1):143. doi: 10.1007/s10238-025-01684-1.
Making an early diagnosis of cancer still in the early stages, when completely asymptomatic, is the challenge modern medicine has been setting for several decades. In gynecology, no effective screening has yet been found and approved for endometrial and ovarian cancer. Mammography is an effective screening method for Breast Cancer, as well as Pap Test for Cervical Cancer, but they are underused in third world countries because of their expensive and specific instrumentation. Previous studies showed how "machine learning analysis methods" of the spectral information obtained from dried urine samples could provide good accuracy in differentiation between healthy and ovarian or endometrial cancer. In this study, we also apply ATR-FTIR spectrometry's practical, fast, and relatively inexpensive principles to liquid urine analysis from 309 patients undergoing surgical treatment for benign or malignant diseases (endometrium, breast, cervix, vulvar and ovarian cancer). The data obtained from those liquid samples were then analyzed to train a machine learning model to classify healthy VS cancer patients. We obtained an accuracy of > 91%, and we also identified discriminant wavelengths (2093, 1774 cm). These frequencies are close to already reported ones in other studies, indicating a possible association with tumor presence and/or progression.
在癌症完全没有症状的早期阶段进行早期诊断,是现代医学几十年来一直面临的挑战。在妇科领域,尚未发现并批准用于子宫内膜癌和卵巢癌的有效筛查方法。乳房X光检查是乳腺癌的有效筛查方法,宫颈涂片检查是宫颈癌的有效筛查方法,但由于其仪器昂贵且具有特殊性,在第三世界国家未得到充分利用。先前的研究表明,从干燥尿液样本中获取的光谱信息的“机器学习分析方法”在区分健康人与卵巢癌或子宫内膜癌患者方面具有较高的准确性。在本研究中,我们还将衰减全反射傅里叶变换红外光谱(ATR-FTIR)实用、快速且相对便宜的原理应用于309例因良性或恶性疾病(子宫内膜癌、乳腺癌、宫颈癌、外阴癌和卵巢癌)接受手术治疗的患者的液体尿液分析。然后对从这些液体样本中获得的数据进行分析,以训练机器学习模型对健康患者和癌症患者进行分类。我们获得了大于91%的准确率,并且还确定了判别波长(2093、1774厘米)。这些频率与其他研究中已报道的频率相近,表明可能与肿瘤的存在和/或进展有关。