TMDFM: A data fusion model for combined detection of tumor markers

Chi Yuan, Yongli Wang, Yanchao Li
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Abstract

The field of biomarkers in cancer research has recently gained widespread interest, for its potential to improve diagnosis accuracy, prognosis, and make cancer treatments to be more personalized. However, the detection of multi-tumor markers method still has many problems, such as limited applicability, need to different model for different tumor markers, a simple series or parallel method cannot effectively take advantage of different tumor markers. This paper proposed a data fusion method for multi-tumor markers, which can be adapted to different scene. It can effectively use the different markers to give an adjuvant diagnosis. With the new markers continue to be found, we can provide guidance for the combined detection.
TMDFM:用于肿瘤标志物联合检测的数据融合模型
近年来,生物标志物在癌症研究领域获得了广泛的关注,因为它具有提高诊断准确性、预后和使癌症治疗更加个性化的潜力。然而,多种肿瘤标志物的检测方法仍然存在许多问题,如适用性有限,需要针对不同的肿瘤标志物建立不同的模型,简单的串联或并行方法不能有效地利用不同的肿瘤标志物。提出了一种能够适应不同场景的多肿瘤标记物数据融合方法。它可以有效地利用不同的标记物进行辅助诊断。随着新标记物的不断发现,我们可以为联合检测提供指导。
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