Tumor abnormal protein as a promising biomarker for screening solid malignancies and monitoring recurrence and metastasis

Zhihui Zhang,Changjun Tian, Yuexuan Liu,Lin Zhang,Han Sun, Siqi He, Yujia Liu, Hui Fan,Yongsheng Zhang, Mingxin Gao,Shuhua Wu

FRONTIERS IN ONCOLOGY(2023)

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摘要
BackgroundTumor abnormal protein (TAP), the sugar chain protein released by tumor cells during metabolism, allows the development of a technique that exploits aggregated tumor-associated abnormal sugar chain signals in diagnosing malignancies. Clinically, we have found that TAP detection can well predict some malignancies, but several physicians have not paid attention, and related studies have been minimal.MethodsWe evaluated TAP's ability to distinguish between malignancies and benign diseases by receiver operating characteristic (ROC) curve analysis and studied the possibility of monitoring malignancy progression by evaluating TAP levels in follow-up. We used Kaplan-Meier survival curves and Cox proportional hazard regression models to investigate the relationship between TAP and prognosis.ResultsTAP levels were higher in whole solid malignancies and every type of solid malignancy than in benign patients. ROC curve analysis showed that TAP levels aid in distinguishing between malignancies and benign diseases. TAP levels decreased in patients with complete remission (CR) after treatment and increased in patients with relapse from CR. Patients with metastases had higher TAP levels than non-CR patients without metastases. There was no difference in overall survival among patients with different TAP levels, and multivariate analysis suggested that TAP was not an independent risk factor for solid malignancies.ConclusionTAP is an effective screening biomarker for many solid malignancies that can be used to monitor the progression of malignancies but not to prognosticate.
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关键词
tumor abnormal protein (TAP),solid malignancies,tumor biomarkers,diagnostic,recurrence,metastasis,prognosis
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