Prostate cancer classification from prostate biomedical data using ant rough set algorithm with radial trained extreme learning neural network

Prostate cancer is commonly occurs in prostate that affects small walnut and generates the seminal fluid for men. This disease is happening due to urinating trouble, blood semen, bone pain, stream of urine other harmful activities such as race, obesity and genetic changes. The improper symptoms of prostate cancer disease, it is challenge to identify it in the starting stage. So, different soft computing and machine learning techniques utilized to predict the Prostate cancer due to its severe side effects. Initially prostate cancer biomedical information has been collected from DBCR dataset that manage the patient age, cancer volume, prostate weight, Gleason score, vesicle invasion, prostate specific antigen details and so on. In the wake of gathering prostate biomedical data, undesirable information has been evacuated by applying the mean mode based standardization procedures and the advanced elements are chosen with the assistance of the subterranean insect harsh set hypothesis. The chose information has been arranged utilizing the outspread prepared extraordinary learning neural systems. The classifier successfully classifies the abnormal prostate features. At that point the effectiveness of prostate cancer prediction framework is inspected using assistance of mean square error rate, hit rate, selectivity and accuracy.

[1]  F. Saad,et al.  Canadian Urological Association recommendations on prostate cancer screening and early diagnosis , 2017 .

[2]  Barnali Sahu,et al.  A Novel Feature Selection Algorithm using Particle Swarm Optimization for Cancer Microarray Data , 2012 .

[3]  Bruno G. Loos,et al.  UvA-DARE ( Digital Academic Repository ) Artificial neural networks for the diagnosis of aggressive periodontitis trained by immunologic parameters , 2018 .

[4]  Douglas K Owens,et al.  Screening for Prostate Cancer: A Guidance Statement From the Clinical Guidelines Committee of the American College of Physicians , 2013, Annals of Internal Medicine.

[5]  Mesut Remzi,et al.  An artificial neural network for prostate cancer staging when serum prostate specific antigen is 10 ng./ml. or less. , 2003, The Journal of urology.

[6]  U. Velden Purpose and problems of periodontal disease classification. , 2005 .

[7]  Sukumar Mishra,et al.  Maintaining Security and Privacy in Health Care System Using Learning Based Deep-Q-Networks , 2018, Journal of Medical Systems.

[8]  J. Erdman,et al.  Processed and raw tomato consumption and risk of prostate cancer: a systematic review and dose–response meta-analysis , 2018, Prostate Cancer and Prostatic Diseases.

[9]  Ayman El-Baz,et al.  Deep Learning Role in Early Diagnosis of Prostate Cancer , 2018, Technology in cancer research & treatment.

[10]  Narendra Pradhan,et al.  An Analytical and Comparative Study of Various Data Preprocessing Method in Data Mining , 2014 .

[11]  M. Roobol,et al.  Prostate‐specific antigen‐based prostate cancer screening: Past and future , 2015, International journal of urology : official journal of the Japanese Urological Association.

[12]  P. Vályi,et al.  [Periodontal abscess: etiology, diagnosis and treatment]. , 2004, Fogorvosi szemle.

[13]  P. Mohamed Shakeel,et al.  Developing brain abnormality recognize system using multi-objective pattern producing neural network , 2018, Journal of Ambient Intelligence and Humanized Computing.

[14]  E. Kehinde,et al.  Oral antibiotics in trans-rectal prostate biopsy and its efficacy to reduce infectious complications: Systematic review , 2015, Urology annals.

[15]  Thomas Tolxdorff,et al.  Classification Models for Early Detection of Prostate Cancer , 2008, Journal of biomedicine & biotechnology.

[16]  Martin Donnelley,et al.  Computer aided long bone fracture detection , 2005, Proceedings of the Eighth International Symposium on Signal Processing and Its Applications, 2005..

[17]  Mokhtar M. Hasan,et al.  Robust Gesture Recognition Using Gaussian Distribution for Features Fitting , 2012 .

[18]  Andreas Bourdoumis,et al.  The novel prostate cancer antigen 3 (PCA3) biomarker. , 2010, International braz j urol : official journal of the Brazilian Society of Urology.

[19]  E. Lander,et al.  Gene expression correlates of clinical prostate cancer behavior. , 2002, Cancer cell.

[20]  K. Mikami,et al.  Prediction of prostate cancer by deep learning with multilayer artificial neural network , 2018, bioRxiv.