Info: Zenodo’s user support line is staffed on regular business days between Dec 23 and Jan 5. Response times may be slightly longer than normal.

Published December 24, 2018 | Version v1
Journal article Open

Disease Predictive Diagnostics Using Machine Learning

  • 1. M.E Student, Department of Computer Science and Engineering Gnanamani College of Technology, Namakkal, Tamil Nadu, India
  • 2. Assistant Professor Department of Computer Science and Engineering Gnanamani College of Technology, Namakkal, Tamil Nadu, India

Description

Big Data is collecting large amounts of data. That's big. What is Uncontrollable with the
Conventional Method It is difficult to process this large amount of data in a conventional
way. So there are many techniques to handle and analyze this huge amount of data. The
challenge we face when storing this huge amount of data is analysis, sharing, storage, etc.
Big data is difficult to master with the traditional approach, so there are different methods.
Clustering and classification have played a significant role in countless applications such as
cognitive services, image recognition and processing, business and law, text and speech,
medicine, weather forecasting, genetics, bioinformatics and so on. Some as of late settled
machine learning approaches are introduced here, with the point of passing on vital ideas to
order and grouping specialists.For this purpose, record the hospital data of a particular
region. For missing data, use a latent factor model to obtain the incomplete data.The
previous work on disease prediction uses the CNN-UDRP (Convolutional Neural Network
Based Unimodel Disease Prediction) algorithm.The prediction of the CNN-MDRP algorithm
is more accurate than in the previous prediction algorithm.

Files

(1-10)DISEASE PREDICTIVE DIAGNOSTICS.pdf

Files (290.8 kB)

Name Size Download all
md5:e93053f4819c92c3728933984fe10f3f
290.8 kB Preview Download

Additional details

References

  • BasuRoy.S, Teredesai.A, Zolfaghar.K, Liu.R, Hazel.D, Newman.S,and Marinez.A, (2015) ―Dynamic hierarchical classification for patient risk-ofreadmission,‖ in Proceeding of the 21th ACM SIGKDD international conference on knowledge discovery and data mining. ACM, pp.1691– 1700
  • Bates.D.W, Saria.S, Ohno-Machado.L, Shah.A, and Escobar.G, (2014)―Big data in health care: using analytics to identify and manage high-risk and high-cost patients,‖ Health Affairs, vol. 33, no. 7, pp. 1123–1131
  • Chen.H, Chiang.R.H, and Storey V.C,(2012) ―Business intelligence and analytics: From big data to big impact.‖ MIS quarterly, vol. 36, no. 4,pp. 1165–1188
  • Chen.M, Ma.Y, Li.Y, Wu.D, Zhang.Y, Youn.C,(2017) ―Wearable 2.0: Enable Human-Cloud Integration in Next Generation Healthcare System,‖ IEEE Communications, Vol. 55, No. 1, pp. 54–61
  • Chen.M, Mao.S, and Liu.Y, (2014)―Big data: A survey,‖ Mobile Networks and Applications, vol. 19, no. 2, pp. 171–209
  • Groves.P, Kayyali.B, Knott.D, and KuikenS.V,(2016) ―The'bigdata'revolution in healthcare: Accelerating value and innovation,‖
  • Hwang.K, Chen.M,(2017) ―Big Data Analytics for Cloud/IoT and Cognitive Computing,‖ Wiley, U.K., ISBN: 9781119247029
  • Jensen.P.B, JensenL.J, and Brunak.S,(2012) ―Mining electronic health records: towards better research applications and clinical care,‖ Nature Reviews Genetics, vol. 13, no. 6, pp. 395–405
  • Lin.K, Chen.M, Deng.J, Hassan.M.M, and Fortino.G, (2016)―Enhanced fingerprinting and trajectory prediction for iot localization in smart buildings,‖ IEEE Transactions on Automation Science and Engineering, vol. 13, no. 3, pp. 1294–1307
  • Marcoon.S, Chang.A.M, Lee.B, Salhi.R, and Hollander.J.E,(2013)―Heart score to further risk stratify patients with low timi scores,‖ Critical pathways in cardiology, vol. 12, no. 1, pp. 1–5
  • Nori.N, Kashima.K, Yamashita.K, Ikai.H, and Imanaka.Y, (2015)―Simultaneous modeling of multiple diseases for mortality prediction in acute hospital care,‖ in Proceedings of the 21th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining
  • Oliver.D, Daly.F, Martin.F.C, and McMurdo.M.E, (2004)―Risk factors and risk assessment tools for falls in hospital in-patients: a systematic review,‖ Age and ageing, vol. 33, no. 2, pp. 122–130

Subjects