Predicting Breast Screening Attendance Using Machine Learning Techniques

Machine learning-based prediction has been effectively applied for many healthcare applications. Predicting breast screening attendance using machine learning (prior to the actual mammogram) is a new field. This paper presents new predictor attributes for such an algorithm. It describes a new hybrid algorithm that relies on back-propagation and radial basis function-based neural networks for prediction. The algorithm has been developed in an open source-based environment. The algorithm was tested on a 13-year dataset (1995-2008). This paper compares the algorithm and validates its accuracy and efficiency with different platforms. Nearly 80% accuracy and 88% positive predictive value and sensitivity were recorded for the algorithm. The results were encouraging; 40-50% of negative predictive value and specificity warrant further work. Preliminary results were promising and provided ample amount of reasons for testing the algorithm on a larger scale.

[1]  R. Blanks,et al.  Effect of NHS breast screening programme on mortality from breast cancer in England and Wales, 1990-8: comparison of observed with predicted mortality , 2000, BMJ : British Medical Journal.

[2]  Azeem Majeed,et al.  Impact of Follow up Letters on Non-Attenders for Breast Screening: A General Practice Based Study , 1997, Journal of medical screening.

[3]  H. Iwase,et al.  [Breast cancer]. , 2006, Nihon rinsho. Japanese journal of clinical medicine.

[4]  W. Marsden I and J , 2012 .

[5]  I. Basnett,et al.  Approaches to improving breast screening uptake: evidence and experience from Tower Hamlets , 2009, British Journal of Cancer.

[6]  Yufeng Zheng,et al.  Breast Cancer Detection with Gabor Features from Digital Mammograms , 2010, Algorithms.

[7]  Julietta Patnick,et al.  DISCLOSURE OF AUDIT RESULTS IN CANCER SCREENING ADVICE ON BEST PRACTICE , 2006 .

[8]  P. Forrest,et al.  Breast cancer screening : report to the Health Ministers of England, Wales, Scotland & Northern Ireland , 1986 .

[9]  Cassandra E. Simon,et al.  Breast cancer screening: cultural beliefs and diverse populations. , 2006, Health & social work.

[10]  J Austoker,et al.  Improving attendance for breast screening among recent non-attenders: a randomised controlled trial of two interventions in primary care , 2001, Journal of medical screening.

[11]  R. Wigley,et al.  Alternative medicine , 1983, The New Zealand medical journal.

[12]  A S St Leger,et al.  Interventions to increase breast screening uptake: do they make any difference? , 1999, Journal of medical screening.

[13]  Marcela Böhm-Vélez The system does work. , 2004, Journal of the American College of Radiology : JACR.

[14]  Ann Turner Development of a Comprehensive Diary and Checklist for Headache Patients , 2004 .

[15]  Lynda Wyld,et al.  Mammographic Breast Screening in Elderly Women , 2010 .

[16]  Hans Helenius,et al.  Customer fee and participation in breast-cancer screening , 2001, The Lancet.

[17]  A. Oikonomou,et al.  Breast self examination training through the use of multimedia: a prototype multimedia application , 2003, Proceedings of the 25th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (IEEE Cat. No.03CH37439).

[18]  F J Gilbert,et al.  Improving Breast Screening Uptake: Persuading Initial Non-Attenders to Attend , 1994, Journal of medical screening.

[19]  Hisbel Arochena Modelling and prediction of parameters affecting attendance to the NHS breast cancer screening programme , 2003 .

[20]  S. Woolf,et al.  The 2009 breast cancer screening recommendations of the US Preventive Services Task Force. , 2010, JAMA.

[21]  Epstein,et al.  The politics of cancer , 2000, JAMA.

[22]  D. Weller,et al.  Uptake in cancer screening programmes: a priority in cancer control , 2009, British Journal of Cancer.

[23]  D. Schopper,et al.  How effective are breast cancer screening programmes by mammography? Review of the current evidence. , 2009, European journal of cancer.