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A bio-inspired computing model for ovarian carcinoma classification and oncogene detection

机译:卵巢癌分类和癌基因检测的生物启发计算模型

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Motivation: Ovarian cancer is the fifth leading cause of cancer deaths in women in the western world for 2013. In ovarian cancer, benign tumors turn malignant, but the point of transition is difficult to predict and diagnose. The 5-year survival rate of all types of ovarian cancer is 44%, but this can be improved to 92% if the cancer is found and treated before it spreads beyond the ovary. However, only 15% of all ovarian cancers are found at this early stage. Therefore, the ability to automatically identify and diagnose ovarian cancer precisely and efficiently as the tissue changes from benign to invasive is important for clinical treatment and for increasing the cure rate. This study proposes a new ovarian carcinoma classification model using two algorithms: a novel discretization of food sources for an artificial bee colony (DfABC), and a support vector machine (SVM). For the first time in the literature, oncogene detection using this method is also investigated.
机译:动机:2013年,卵巢癌是西方女性死于癌症的第五大原因。在卵巢癌中,良性肿瘤会变成恶性肿瘤,但很难预测和诊断其转变点。所有类型的卵巢癌的5年生存率均为44%,但是如果在癌症扩散到卵巢外之前就发现并治疗,则可以提高到92%。但是,在此早期阶段仅发现所有卵巢癌的15%。因此,随着组织从良性向侵袭性的变化,准确,有效地自动识别和诊断卵巢癌的能力对于临床治疗和提高治愈率很重要。这项研究提出了一种使用两种算法的新型卵巢癌分类模型:人工蜂群的食物来源的新型离散化(DfABC)和支持向量机(SVM)。在文献中第一次也研究了使用这种方法检测癌基因的方法。

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