Page 230 - Big Data Analytics for Intelligent Healthcare Management
P. 230
REFERENCES 223
[13] D. Laney, 3D data management: controlling data volume, velocity and variety, META Group Res. Note
6 (70) (2001) 1.
[14] C. Lee, Z. Luo, K.Y. Ngiam, M. Zhang, K. Zheng, G. Chen, W.L.J. Yip, Big healthcare data analytics: chal-
lenges and applications, in: Handbook of Large-Scale Distributed Computing in Smart Healthcare, Springer,
Cham, 2017, pp. 11–41.
[15] S. Aich, M. Sain, J. Park, K.W. Choi, H.C. Kim, A text mining approach to identify the relationship between
gait-Parkinson’s disease (PD) from PD based research articles, in: International Conference on Inventive
Computing and Informatics (ICICI), IEEE, 2017, pp. 481–485.
[16] S. Aich, P.M. Pradhan, J. Park, H.C. Kim, A machine learning approach to distinguish Parkinson’s disease
(PD) patient’s with shuffling gait from older adults based on gait signals using 3D motion analysis, Int. J. Eng.
Technol. 7 (3.29) (2018) 153–156.
[17] H. Das, A.K. Jena, J. Nayak, B. Naik, H.S. Behera, A novel PSO based back propagation learning-MLP
(PSO-BP-MLP) for classification, in: Computational Intelligence in Data Mining, vol. 2, Springer, New
Delhi, 2015, pp. 461–471.
[18] H. Das, B. Naik, H.S. Behera, Classification of diabetes mellitus disease (DMD): a data mining (DM) ap-
proach, in: Progress in Computing, Analytics and Networking, Springer, Singapore, 2018, pp. 539–549.
[19] R. Sahani, C. Rout, J.C. Badajena, A.K. Jena, H. Das, Classification of intrusion detection using data mining
techniques, in: Progress in Computing, Analytics and Networking, Springer, Singapore, 2018, pp. 753–764.
[20] S. Aich, H.C. Kim, Auto detection of Parkinson’s disease based on objective measurement of gait parameters
using wearable sensors, Artif. Intell. 117 (2018) 103–112.
[21] Stanford Medicine, Retrieved from:https://med.stanford.edu/content/dam/sm/sm-news/documents/
StanfordMedicineHealthTrendsWhitePaper2017.pdf, 2017.
[22] Healthcare Analytics, Medical Analytics Market by Type (predictive, prescriptive) Application (Clinical,
RCM, Claim, Fraud, Waste, Supply Chain, PHM) Component (Service, Software) Delivery (On demand,
Cloud) End User (Payer, Hospital, ACO)—Global Forecast to 2022, Retrieved from:https://www.
marketsandmarkets.com/Market-Reports/healthcare-data-analytics-market-905.html, 2017.
[23] C. Pradhan, H. Das, B. Naik, N. Dey, Handbook of Research on Information Security in Biomedical Signal
Processing. IGI Global, Hershey, PA, 2018, pp. 1–414, https://doi.org/10.4018/978-1-5225-5152-2.
[24] K.H.K. Reddy, H. Das, D.S. Roy, A data aware scheme for scheduling big-data applications with SAVANNA
hadoop, in: Futures of Network, CRC Press, 2017.
[25] C.R. Panigrahi, M. Tiwary, B. Pati, H. Das, Big data and cyber foraging: future scope and challenges,
in: Techniques and Environments for Big Data Analysis, Springer, Cham, 2016, pp. 75–100.
[26] Guardian, Top 10 Biggest Healthcare Data Breaches of All Time, Retrieved from:https://digitalguardian.
com/blog/top-10-biggest-healthcare-data-breaches-all-time, 2018.
[27] E. Snell, 41% of Health Data Breaches Stem from Unintended Disclosure, Retrieved from:https://
healthitsecurity.com/news/41-of-health-data-breaches-stem-from-unintended-disclosure, 2017.
[28] M. Swan, Blockchain: Blueprint for a New Economy, O’Reilly Media, Inc, 2015.
[29] R. Hackett, Wait, What Is Blockchain?, Retrieved from:http://fortune.com/2016/05/23/blockchain-
definition/, 2016. Accessed 15 December 2017.
[30] Z. Zheng, S. Xie, H. Dai, X. Chen, H. Wang, An overview of blockchain technology: architecture, consensus,
and future trends, in: 2017 IEEE International Congress on Big Data (BigData Congress), IEEE, 2017,
pp. 557–564.
[31] Report Buyer, Blockchain Market by Provider, Application, Organization Size, Industry Vertical And Re-
gion—Global Forecast to 2022, Available from:https://www.reportbuyer.com/product/4226790, 2017.
Accessed 24 January 2018.
[32] S. Nakamoto, Bitcoin: A Peer-to-Peer Electronic Cash System, (2008).
[33] M. Crosby, P. Pattanayak, S. Verma, V. Kalyanaraman, Blockchain technology: beyond bitcoin, Appl. Innov.
Rev. 2 (2016) 6–10.