IJITCS Vol. 8, No. 6, 8 Jun. 2016
Cover page and Table of Contents: PDF (size: 638KB)
Full Text (PDF, 638KB), PP.73-84
Views: 0 Downloads: 0
Big Data, Predictive Analytics, Parkinson's disease, Voice dataset
In healthcare industries, the demand for maintaining large amount of patients' data is steadily growing due to rising population which has resulted in the increase of details about clinical and laboratory tests, imaging, prescription and medication. These data can be called "Big Data", because of their size, complexity and diversity. Big data analytics aims at improving patient care and identifying preventive measures proactively. To save lives and recommend life style changes for a peaceful and healthier life at low costs. The proposed predictive analytics framework is a combination of Decision Tree, Support Vector Machine and Artificial Neural Network which is used to gain insights from patients. Parkinson's disease voice dataset from UCI Machine learning repository is used as input. The experimental results show that early detection of disease will facilitate clinical monitoring of elderly people and increase the chances of their life span and improved lifestyle to lead peaceful life.
N. Shamli, B. Sathiyabhama, "Parkinson's Brain Disease Prediction Using Big Data Analytics", International Journal of Information Technology and Computer Science(IJITCS), Vol.8, No.6, pp.73-84, 2016. DOI:10.5815/ijitcs.2016.06.10
[1]Michael Minelli, Michele Chambers, Ambiga Dhiraj. Big Data Big analytics: emerging business intelligence and analytics trend for today’s businesses, feb 2013.
[2]Parkinson’s disease, challenges, progress and promise: National Institute Of Neurological Disorder And Stroke, National Institute of Health, November 2004.
[3]Jiawai Han and Micheline Kamber. Data Mining Concepts and Techniques: second edition.
[4]Pravin Kumar and Vijay Singh Rathore. Efficient Capabilities of Processing of Big Data using Hadoop MapReduce: International Journal of Advanced Research in Computer and Communication Engineering June 2014; Vol: 3, Issue 6.
[5]Wei Dai and Wei Ji. A MapReduce Implementation of C4.5 Decision Tree Algorithm: International Journal of Database Theory and Application; Vol: 7, No.1 (2014), pp.49-60.
[6]TawseefAyoub Shaikh. A Prototype of Parkinson’s and Primary Tumor Diseases Prediction Using Data Mining Techniques: International Journal of Engineering Science Invention April 2014, Vol: 3 Issue 4, pp. 23-28.
[7]Anil Radhakrishnan and kirankalmadi.Big Data Medical Engine in the cloud (BDMEiC): your new Health Doctor: vol: 11 Nov 1, 2013.
[8]DivyaTomar and Sonali Agarwal. A survey on Data Mining approaches for Healthcare: International Journal of Bio-Science and Bio-Technology 2013, vol: 5.
[9]GeethaRamani R, Sivagami G, ShomanaGracia Jacob. Feature Relevance Analysis and Classification of Parkinson’s disease Tele-Monitoring data Through Data Mining: International Journal of Advanced Research in Computer Science and Software Engineering March 2012, Vol: 2.
[10]WhitePaper:Extract,Transform,and Load Big Data with ApacheHadoop,https://software.intel.com/sites/default/files/article/402274/etl-big-data-with-hadoop.pdf.
[11]Tarigoppula et al. Intelligent Parkinson Disease Prediction Using Machine Learning Algorithms: IJEIT September 2013, Vol: 3, Issue 3.
[12]Chandrashekhar Azad, Sanjay Jain, Vijay Kumar Jha. Design and Analysis of Data Mining Based Prediction Model for Parkinson’s disease: IJCSE.
[13]Dr.Hariganesh and Gracyannamary. Comparative study of Data Mining Approaches for Parkinson’s Disease: IJARCET september 2014, Vol: 3, Issue 9.
[14]Max A. Little, Patrick E. McSharry, Eric J. Hunter, Lorraine O. Ramig. Suitability of dysphonia measurements for telemonitoring of Parkinson's disease',IEEE Transactions on Biomedical Engineering 2008, https://archive.ics.uci.edu/ml/datasets/Parkinsons
[15]GeetaYadav, Yugal Kumar, GadadharSahoo. Predication of Parkinson's disease using data mining methods: A comparative analysis of tree, statistical, and support vector machine classifiers: Indian Journal of Medical Science, Vol: 65.
[16]IBM software, Descriptive, predictive, prescriptive: Transforming asset and facilities management with analytics: october2013.
[17]Lucas PJF, Abu-Hanna A. Prognostic methods in medicine: ArtifIntell Med 1999; 15: 105-19.
[18]TheNorman H.Nie. Rise of Big Data spurs a revolution in Big Data analytics: Revolution analytics.
[19]Shianghau Wu, JiannjongGuo. A Data Mining Analysis of the Parkinson’s disease: Scientific Research, iBusiness 2011, 3, 71-75.
[20]Genetics Home References, http://ghr.nlm.nih.gov/condition/parkinson-disease.
[21]HananelHazan et al. Early Diagnosis of Parkinson’sDisease via Machine Learning on Speech Data: 2012 IEEE 27-th Convention of Electrical and Electronics Engineers in Israel.
[22]MikeGualtieri. The Forrester Wave: Big Data Predictive Analytics Solutions, Q1 2013: February 2013.
[23]Jimeng Sun. Big Data Analytics for healthcare: Tutorial presentation at the SIAM InternationalConference on Data Mining, Austin, TX, 2013.
[24]Goncalves L,Subtil A,Rosario oliveira M and De Zea Bermdez P.ROC curve Estimation: An Overview: Revstat-Statistical journal November 1,march 2014,1-20;vol:12.
[25]Hoglinger GU, Rizk P, Muriel MP, Duyckaerts C, Oertel WH, Caille I, et al. Dopamine depletion impairs precursor cell proliferation in Parkinson disease: National Neuroscience 2004,7:726–35.
[26]Kolçe E, Frasheri N. Literature Review of Data Mining Techniques Used in Healthcare Databases: Paper presented at the ICT innovations 2012, Ohrid, Macadonia,September, 2012.
[27]David gila, magnus Johnson b. Diagnosing Parkinson by using Artificial Neural Networks and Support Vector Machines: Global Journal of Computer Science and Tchnology, pp. 63-71.
[28]Explore Big Data Analytics and Hadoop. [Online] http://www.ibm.com/developerworks/training/kp/os-kp-hadoop/
[29]http://www.pdf.org/en/surgical_treatments.
[30]Jingjing Yin. Overview of Inference about Roc Curve in Medical Diagnosis: Biometrics & Biostatistics International Journal December 2014; Vol: 1 Issue 3.
[31]Gong-Qing Wu et al. MReC4.5: C4.5 Ensemble Classification with MapReduce.
[32]Seyed Reza Pakize and Abolfazl Gandomi. Comparative Study of Classification Algorithms Based On MapReduce Model: International Journal of Innovative Research in Advanced Engineering August 2014; Vol: 1 Issue 7.