Author/Authors :
Venkata Appaji, Sangapu Department of CSE - KKR & KSR Institute of Technology and Sciences, Guntur, A.P, India , Shankar, R Shiva Department of CSE - S.R.K.R Engineering College, Bhimavaram, W.G. District, A.P. India , Murthy, K.V.S. Department of CSE - S.R.K.R Engineering College, Bhimavaram, W.G. District, A.P, India , Someswara Rao, Chinta Department of CSE - S.R.K.R Engineering College, Bhimavaram, W.G. District, A.P. ,India
Abstract :
Cancer is a collaborative amalgamation of diseases that involves abnormal increase in cell growth
with the potential of occupying and attacking the entire body. According to studies, breast cancer most
likely occurs in women and it has become the second biggest cause of female death. Due to its
widespread penetration and significance, many researchers have analyzed the phenomenon and
further studies are still required to reach an optimum outcome. This study applies deep learning
technique in conjunction with Recurrent Neural Networks (RNN) to predict the formation of breast
cancer disease so that doctors will perform the diagnosis more properly. To assess the efficiency of the
proposed method, breast cancer data belonging to UC Irvine repository were used. Precision, recall,
accuracy, and f1 score of the proposed method showed good scores and the proposed technique
performed well.
Keywords :
Cancer , Breast Cancer , Deep learning , RNN