BAT-ELM:用于预测乳腺癌数据的生物启发模型

Doreswamy, M. Salma
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引用次数: 17

摘要

医学信息学主要涉及使用机器学习和数据挖掘方法寻找与各种致命疾病的诊断和预后相关问题的解决方案。其中一种疾病是乳腺癌,导致数百万人死亡,尤其是女性。在本文中,我们提出了一种生物启发模型BATELM,它是蝙蝠算法(Bat)和极限学习机(ELM)的结合,这在非图像乳腺癌数据分析研究中是第一个。与现有的同类算法相比,BAT和ELM的概念具有许多优势,这促使我们建立一个能够以高精度和最小误差预测医疗数据的模型。在此,我们利用BAT对ELM的参数进行优化,从而有效地完成预测任务。ELM的主要目标是用最小的误差预测数据。为了获得最小的误差,我们在三种不同的学习函数(sigmoid, sin和tanh)上测试了威斯康星乳腺癌预后(WBCP)数据集,并将产生最佳结果的函数视为最终结果。我们进行了两个案例研究来支持我们的模型。在案例研究1中,目的是预测乳腺癌是复发还是非复发。这种情况下获得的准确度为95.7%,RMSE为0.32。在病例研究II中,我们的目标是预测复发时间,该病例的结果准确率为93.75%,RMSE为0.30。在这两种情况下,tanh函数都表现得更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BAT-ELM: A bio inspired model for prediction of breast cancer data
Medical informatics mainly deals with finding solutions for the issues related to the diagnosis and prognosis of various deadly diseases using machine learning and data mining approaches. One such disease is breast cancer, killing millions of people, especially women. In this paper we propose a bio inspired model called BATELM which is a combination of Bat algorithm (BAT) and Extreme Learning Machines (ELM) which is first of its kind in the study of non image breast cancer data analysis. The concept of BAT and ELM which has many advantages when compared to the existing algorithms of their genre have motivated us to build a model that can predict the medical data with high accuracy and minimal error. Here we make use of BAT to optimize the parameters of ELM so that the prediction task is carried out efficiently. The main aim of ELM is to predict the data with minimum error. For attaining a minimal error we have tested Wisconsin Breast Cancer Prognostic (WBCP) dataset upon three different learning functions (sigmoid, sin and tanh) and the function which produces the best result has been considered as the final. We carried out two case studies to support our model. In case study I the objective was to predict whether the breast cancer is recurrent or non-recurrent. The accuracy obtained for this case is found to be 95.7% with an RMSE of 0.32. In case study II our objective was to predict the time of recurrence, the result obtained for this case were found to be 93.75% accurate with an RMSE of 0.30. In both the cases tanh function performed better.
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