医学
癌胚抗原
肺癌
肿瘤科
假阳性悖论
阶段(地层学)
内科学
癌症
细胞角蛋白
痰
生物标志物
荟萃分析
烯醇化酶
接收机工作特性
病理
生物
免疫组织化学
机器学习
古生物学
生物化学
计算机科学
肺结核
作者
Eithar Mohamed,Daniel Martinez,Mohammad‐Salar Hosseini,Si Qi Yoong,Daniel Fletcher,Simon P. Hart,Barbara‐ann Guinn
出处
期刊:Carcinogenesis
[Oxford University Press]
日期:2023-12-08
卷期号:45 (1-2): 1-22
被引量:8
标识
DOI:10.1093/carcin/bgad091
摘要
Abstract Lung cancer (LC) causes few symptoms in the earliest stages, leading to one of the highest mortality rates among cancers. Low-dose computerised tomography (LDCT) is used to screen high-risk individuals, reducing the mortality rate by 20%. However, LDCT results in a high number of false positives and is associated with unnecessary follow-up and cost. Biomarkers with high sensitivities and specificities could assist in the early detection of LC, especially in patients with high-risk features. Carcinoembryonic antigen (CEA), cytokeratin 19 fragments and cancer antigen 125 have been found to be highly expressed during the later stages of LC but have low sensitivity in the earliest stages. We determined the best biomarkers for the early diagnosis of LC, using a systematic review of eight databases. We identified 98 articles that focussed on the identification and assessment of diagnostic biomarkers and achieved a pooled area under curve of 0.85 (95% CI 0.82–0.088), indicating that the diagnostic performance of these biomarkers when combined was excellent. Of the studies, 30 focussed on single/antigen panels, 22 on autoantibodies, 31 on miRNA and RNA panels, and 15 suggested the use of circulating DNA combined with CEA or neuron-specific enolase (NSE) for early LC detection. Verification of blood biomarkers with high sensitivities (Ciz1, exoGCC2, ITGA2B), high specificities (CYFR21-1, antiHE4, OPNV) or both (HSP90α, CEA) along with miR-15b and miR-27b/miR-21 from sputum may improve early LC detection. Further assessment is needed using appropriate sample sizes, control groups that include patients with non-malignant conditions, and standardised cut-off levels for each biomarker.
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