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Decision Fusion of Circulating Markers for Breast Cancer Detection in Premenopausal Women

机译:乳腺癌循环标志物的决策融合乳腺癌检测

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Current mammograpmc screening for breast cancer is less effective for younger women. To complement mammography for premenopausal women, we investigated the feasibility screening test using 98 blood serum proteins. Because the data set was very noisy and contained only weak features, we used a classifier designed for noisy data: decision fusion. Decision fusion outperformed both a support vector machine (SVM) and linear regression with forward stepwise feature selection on all three two-class classification tasks: normal tissue vs. cancer, normal tissue vs. benign lesions, and benign lesions vs. cancer. Decision fusion detected cancer moderately well (AUC—0.84 on normal vs. cancer), demonstrating promise as a screening tool. Decision fusion also detected benign lesions similarly well (AUC=0.83 on normal vs. benign lesions) and was the only classifier to achieve any success in separating benign from malignant lesions (AUC=0.64 on benign vs. cancer). The classification results suggest that the assayed proteins are more indicative of a secondary effect, such as immune response, rather than specific for breast cancer. In conclusion, the decision fusion classifier demonstrated some promise in detecting breast lesions and outperformed other classifiers, especially for the very noisy classification problem of distinguishing benign from malignant lesions.
机译:目前对年轻女性的乳腺癌筛查对乳腺癌的筛选较小。为了补充乳房X线照相,我们使用98血清蛋白调查了可行性筛选试验。由于数据集非常嘈杂并且仅包含弱功能,因此我们使用专为嘈杂数据设计的分类器:决策融合。决策融合在所有三种两类分类任务上与前向逐步特征选择的决策融合表现优于所有三类分类任务:正常组织与癌症,正常组织与良性病变,良性病变与癌症。决策融合中度良好地检测癌症(正常与癌症的AUC-0.84),证明了作为筛选工具的承诺。决策融合也类似地检测到良性病变(AUC = 0.83正常与良性病变),并且是唯一可以在分离恶性病变中取得成功的唯一分类器(AUC = 0.64对良性对癌症的AUC = 0.64)。分类结果表明,测定的蛋白质更为指示次要效应,例如免疫应答,而不是特定于乳腺癌。总之,决策融合分类器证明了检测乳房病变和表现优于其他分类器的一些承诺,特别是对于区分良性病变的非常嘈杂的分类问题。

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