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A new approach for prediction of lung carcinoma using back propogation neural network with decision tree classifiers

  • R. Varadharajan
  • M. K. Priyan
  • Parthasarathy Panchatcharam
  • S. Vivekanandan
  • M. Gunasekaran
Original Research
  • 29 Downloads

Abstract

Carcinoma otherwise called Cancer is the normally developing and most risky ailment happened in human species. Lung Carcinoma is one of them. It is an ailment that happens because of uncontrolled development of harmful cells in the tissues of the lungs. Earlier determination of the ailment spares immense number of lives, bombing in which may prompt other extreme issues causing sudden deadly demise. Thought process of this framework is to mechanize the recognition procedure in order to perform propelled identification of the malady in its beginning period. In this paper an investigation was made to examine the lung tumour expectation utilizing classification algorithms, for example, back propogation neural network and decision tree. At first 20 tumour and non-disease patients’ examples information were gathered with 30 qualities, pre-prepared and dissected utilizing classification algorithms and later a similar methodology was actualized on 50 occurrences (50 Cancer patients and 10 non growth patients). The informational indexes utilized as a part of this examination are taken from UCI data sets for patients affected by lung cancer and Michigan Lung Cancer patient’s informational index. The principle point of this paper is to give the prior notice to the clients and to quantify the execution investigation of the classification algorithms utilizing WEKA Tool. Test comes about demonstrate that the previously mentioned calculation has promising outcomes for this reason with the general forecast exactness of 94 and 95.4%, separately. Another way to deal with identifies the lungs tumour by Decision tree and BPNN calculation will give viable outcome as contrast with other calculation. The proposed framework will improve the execution of prediction and classification.

Keywords

Back propogation Decision tree Lung cancer Classification algorithms 

Notes

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Copyright information

© Springer-Verlag GmbH Germany, part of Springer Nature 2018

Authors and Affiliations

  • R. Varadharajan
    • 1
  • M. K. Priyan
    • 2
  • Parthasarathy Panchatcharam
    • 2
  • S. Vivekanandan
    • 2
  • M. Gunasekaran
    • 3
  1. 1.Sri Ramanujar Engineering CollegeChennaiIndia
  2. 2.VIT UniversityVelloreIndia
  3. 3.University of CaliforniaDavisUSA

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