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Fetal Status Foretell based on Maternal Clinical Analysis using ML

Deepak N R, Avinash Kumar, Harsh Kumar, Rishav Kr Chourasia, Syed Jugnu Abbas

Abstract


Pre-Term is the term for every birth before 28 weeks of gestation. This has a substantial influence on mothers' emotional reactions.There may be a chronic psychological risk of post-traumatic stress, especially in the mother. In addition, it should be discussed in the global scenario,To achieve sustainable growth. It is still a distant fact to estimate stillbirths. A plethora of work has been done and the summaries and interpretation of current research have been presented in this article. The primary aim of the paper is to shed light on the difficult problem of pre-term Prediction of Birth. Myriad machine learning techniques are used by different researchers, each with its own precision and form of estimation.


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References


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