首页> 外文会议>BioMedical Information Engineering, 2009. FBIE 2009 >Combination of enhanced AdaBoosting techniques for the characterization of breast cancer tumors
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Combination of enhanced AdaBoosting techniques for the characterization of breast cancer tumors

机译:结合增强的AdaBoosting技术来表征乳腺癌肿瘤

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Breast cancer is a life threatening disease affecting one of every eight women, with the risk increasing significantly with age. Non-invasive diagnostic modalities are preferable over biopsy. However, these non-invasive diagnostic techniques have lower diagnostic accuracy when compared to biopsy. Currently, CAD (Computer-Aided Diagnosis) techniques have demonstrated strong potential to increase the accuracy of such non-invasive diagnostic modalities. This paper proposes the use of boosting to increase the accuracy of CAD-based techniques to solve the breast cancer characterization problem. It investigates and compares the performance of popular variants of the boosting algorithms, namely: AdaBoosting, AveBoosting, GentleBoosting, ConserBoosting, and Average Conservative Boosting and their suitability for the breast cancer tumor characterization problem. This work also proposes a hybrid boosting algorithm that combines the advantages of several boosting techniques. The results of applying the different boosting techniques investigated on real breast cancer benchmarks show that the hybrid boosting algorithm outperforms the other boosting techniques on average by 48%.
机译:乳腺癌是一种威胁生命的疾病,影响到八分之一的女性,其风险随着年龄的增长而显着增加。非侵入性诊断方式比活检更可取。但是,与活检相比,这些非侵入性诊断技术的诊断准确性较低。当前,CAD(计算机辅助诊断)技术已显示出强大的潜力,可以提高这种非侵入性诊断方式的准确性。本文提出了使用boosting来提高基于CAD的技术的准确性,以解决乳腺癌表征问题的方法。它研究并比较了增强算法的流行变体的性能,即:AdaBoosting,AveBoosting,GentleBoosting,ConserBoosting和平均保守增强,以及它们对乳腺癌肿瘤表征问题的适用性。这项工作还提出了一种混合增强算法,该算法结合了几种增强技术的优点。应用在真实乳腺癌基准上研究的不同增强技术的结果表明,混合增强算法平均比其他增强技术性能高出48%。

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