Application of Convolutional Neural Network for Cancer Disease Diagnosis – A Deep Learning based Approach

IF 0.6
S. Sivanantham, D. M, A. Velmurugan, Dr. T. Deepa, Akshaya V
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引用次数: 0

Abstract

Human are vulnerable to the terrible disease named cancer, which is a major factor in the high mortality rate. There are currently lesser DLTs (Deep learning techniques) or MLTs (machine learning techniques) for identifying cancer, despite advances in cancer treatment approaches. The proposed work performs a comparative study which compares the some significant DLTs like RFs (Random Forests), LSTMs (Long Short Term Memories), CNNs (Convolutional Neural Networks) and BPNNs (Back Propagation Neural Networks). These techniques are used here in this work for classification problem. The techniques are made to classify the medical records into benignand cancerous. Three pathological datasets are used to evaluate the above said techniques. CNNs provide the best performance of 0.97 accuracy and it is even good at its values of precisions, recalls and F1 scores.
卷积神经网络在癌症诊断中的应用——一种基于深度学习的方法
人类很容易患上一种叫做癌症的可怕疾病,这是造成高死亡率的一个主要因素。尽管癌症治疗方法取得了进展,但目前用于识别癌症的dlt(深度学习技术)或mlt(机器学习技术)较少。提出的工作进行了一项比较研究,比较了一些重要的dlt,如rf(随机森林),LSTMs(长短期记忆),cnn(卷积神经网络)和bpnn(反向传播神经网络)。这些技术在本工作中用于分类问题。该技术用于将医疗记录分为良性和恶性。三个病理数据集用于评估上述技术。cnn提供了0.97准确率的最佳性能,甚至在精度,召回和F1分数方面也很好。
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来源期刊
自引率
16.70%
发文量
0
期刊介绍: Journal of Intercultural Ethnopharmacology (2146-8397) Between (2012 Volume 1, Issue 1 - 2018 Volume 7, Issue 1). Journal of Complementary Medicine Research is aimed to serve a contemporary approach to the knowledge about world-wide usage of complementary medicine and their empirical and evidence-based effects. ISSN: 2577-5669
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