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Mining Knowledge and Data to Discover Intelligent Molecular Biomarkers: Prostate Cancer i-Biomarkers

机译:采矿知识和数据发现智能分子生物标志物:前列腺癌I-Biomarkers

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Currently, there are some paradigm shifts in medicine, from the search for a single ideal biomarker, to Me search for panels of molecules, and from a reductionistic to a systemic view, placing these molecules on functional networks. There is also a general trend to favor non-invasive biomarkers. Identifying non-invasive biomarkers in high-throughput data, having thousands of features and only tens of samples is not 'trivial. Here, we proposed a methodology and the related con-cepts to develop intelligent'molecular biomarkers, via knowledge mining and knowledge discovery in data, illustrated on prostate cancer diagnosis. An informed feature, selection is done by mining knowledge about pathways involved in prostate cancer, in specialized data bases. A knowledge discovery in data approach, with soft computing methods, is used to identify the relevant features and discover their relationships with clinical Outcomes. The intelligent non-invasive diagnosis systems, is based on a team of mathematical models, discovered with genetic programming; and taking as inputs eight serum angiogenic molecules and PSA. This systems share with other intelligent systems we build, using this methodology but different soft computing techniques, and in different clinical settings—chronic hepatitis, bladder cancer, and prostate cancer—the best published accuracy, even 100%. Soft computing could be a strong foundation for the newly emerging Knowledge-Based-Medicine. The impact on medical practice could be enormous. Instead of offering just hints to the clinicians, like Evidence-Based-Medicine, 'Knowledge-Based-Medicine which is made possible and co-exists with Evidence-Based-Medicine, offers intelligent clinical decision supports sys-tems.
机译:目前,医学中有一些范式转移,从搜索单一理想的生物标志物,对我来说,搜索分子的面板,以及从减少系统到系统性视图,将这些分子放在功能网络上。还有一个有利于非侵入性生物标志物的一般趋势。识别高吞吐量数据中的非侵入性生物标志物,具有数千个特征,只有数十个样品不是'微不足道的。在这里,我们提出了一种方法和相关的Con-Cept,通过知识挖掘和数据中的知识发现,在数据前列腺癌诊断所示。明智的功能,选择通过采矿知识,专业数据库中参与前列腺癌所涉及的途径。具有软计算方法的数据方法中的知识发现,用于识别相关特征,并发现与临床结果的关系。智能的非侵入性诊断系统,基于遗传编程发现的数学模型;并作为输入八个血清血管生成分子和PSA。该系统与我们构建的其他智能系统共享,使用这种方法,但不同的软计算技术,以及在不同的临床环境中 - 慢性肝炎,膀胱癌和前列腺癌 - 最佳发表的准确性,甚至100%。软计算可能是新兴知识型医学的强大基础。对医疗实践的影响可能是巨大的。而不是为临床医生提供暗示,如循证医学,“基于知识的医学,这是一种与基于循证医学的基于证据的医学,提供智能临床决策支持SYS-TEMS。

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