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RETRACTED ARTICLE: Systematic acuity of medicinal big data: need of health industry

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This article was retracted on 30 August 2023

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Abstract

Current stage of technology development is “Trendy computerized Era,” the advanced time of information technology. Perhaps the main structure block in its field is big data. Medical data which includes colossal assortment of essential information with considerable inconstancy, different variety, and immense veracity needs to be analyzed to find out essential information. Many individuals all around the world are enduring coronary illness which prompts perilous sicknesses and even pushing to death. In proposed research, medical data related to heart disease is used for the analysis and prediction which can be ingenuity for better solution of diagnosis. Motto of this exploration is to contribute a profundity concentrate in the space of healthcare using the colossal data and research to close with useful outcomes towards wellbeing of person. Plan and use of verifiable information with expansion day by day refreshes which can set out an optimal freedom to underline on the assessment to work on remedy, organizations, charging cost, safety measures, and many more. During experimentation, many algorithms like neural network and decision tree have been studied and analytical tools like R, Weka, and Python are used for implementation of an algorithm. Experimental results will offer the healthier algorithm for the prediction of heart disease. Study portrays diverse approaches to gather heart-related information from various sources and interaction with them to discover helpful examples. Experimental study shows that implementing probability prediction in R analytical tool gives better precision. Similarly, implementing machine learning algorithm random forest in Weka tool gives the higher precision than other analytical techniques.

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Correspondence to Priyanka P. Shinde.

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This article has been retracted. Please see the retraction notice for more detail:https://doi.org/10.1007/s00779-023-01758-5

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Shinde, P.P., Oza, K.S. & Kamat, R.K. RETRACTED ARTICLE: Systematic acuity of medicinal big data: need of health industry. Pers Ubiquit Comput 27, 941–954 (2023). https://doi.org/10.1007/s00779-022-01681-1

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