Machine Learning Analysis for Remote Prenatal Care
The lack of health professionals, quality health care, and accessible health centers in rural and isolated communities have resulted in high maternal and fetal mortality rates in the Philippines, especially since quality maternal and child healthcare services are concentrated in more developed urban...
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Archīum Ateneo
2020
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ph-ateneo-arc.ecce-faculty-pubs-11082022-03-03T09:57:05Z Machine Learning Analysis for Remote Prenatal Care Bautista, John Mark Quiwa, Quiel Andrew I Reyes, Rosula SJ The lack of health professionals, quality health care, and accessible health centers in rural and isolated communities have resulted in high maternal and fetal mortality rates in the Philippines, especially since quality maternal and child healthcare services are concentrated in more developed urban areas. This study proposes applying the Telemedicine framework as a helping tool for doctors and health professionals. The implemented Telemedicine approach on prenatal care followed a set-up that included patient information input, a mobile application used for both data input and visualization, a cloud-based server for the database, and a machine learning system which analyzed data from the patient profile. With a dataset of 97 samples, four algorithms were implemented for the development of the machine learning system - Decision Tree, Random Forest Decision Tree, K-Nearest Neighbor, and Support Vector Machine. The performance of each algorithm was tested in terms of accuracy, precision, recall, and the F1 score or the weighted average of precision and recall. Based on these parameters, the most effective algorithm was the Random Forest Decision Tree with the highest train score (0.987) and test score (0.900). The results of this algorithm were visualized in an Android mobile application that displayed whether the patient was a positive or negative case with respect to the possibility of having a high-risk pregnancy. 2020-11-01T07:00:00Z text https://archium.ateneo.edu/ecce-faculty-pubs/113 https://ieeexplore.ieee.org/document/9293890 Electronics, Computer, and Communications Engineering Faculty Publications Archīum Ateneo Pregnancy Medical services Machine learning Machine learning algorithms Telemedicine Decision trees Pediatrics prenatal care maternal history Electrical and Computer Engineering Maternal and Child Health Pediatrics Telemedicine |
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Pregnancy Medical services Machine learning Machine learning algorithms Telemedicine Decision trees Pediatrics prenatal care maternal history Electrical and Computer Engineering Maternal and Child Health Pediatrics Telemedicine |
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Pregnancy Medical services Machine learning Machine learning algorithms Telemedicine Decision trees Pediatrics prenatal care maternal history Electrical and Computer Engineering Maternal and Child Health Pediatrics Telemedicine Bautista, John Mark Quiwa, Quiel Andrew I Reyes, Rosula SJ Machine Learning Analysis for Remote Prenatal Care |
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The lack of health professionals, quality health care, and accessible health centers in rural and isolated communities have resulted in high maternal and fetal mortality rates in the Philippines, especially since quality maternal and child healthcare services are concentrated in more developed urban areas. This study proposes applying the Telemedicine framework as a helping tool for doctors and health professionals. The implemented Telemedicine approach on prenatal care followed a set-up that included patient information input, a mobile application used for both data input and visualization, a cloud-based server for the database, and a machine learning system which analyzed data from the patient profile. With a dataset of 97 samples, four algorithms were implemented for the development of the machine learning system - Decision Tree, Random Forest Decision Tree, K-Nearest Neighbor, and Support Vector Machine. The performance of each algorithm was tested in terms of accuracy, precision, recall, and the F1 score or the weighted average of precision and recall. Based on these parameters, the most effective algorithm was the Random Forest Decision Tree with the highest train score (0.987) and test score (0.900). The results of this algorithm were visualized in an Android mobile application that displayed whether the patient was a positive or negative case with respect to the possibility of having a high-risk pregnancy. |
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text |
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Bautista, John Mark Quiwa, Quiel Andrew I Reyes, Rosula SJ |
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Bautista, John Mark Quiwa, Quiel Andrew I Reyes, Rosula SJ |
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Bautista, John Mark |
title |
Machine Learning Analysis for Remote Prenatal Care |
title_short |
Machine Learning Analysis for Remote Prenatal Care |
title_full |
Machine Learning Analysis for Remote Prenatal Care |
title_fullStr |
Machine Learning Analysis for Remote Prenatal Care |
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Machine Learning Analysis for Remote Prenatal Care |
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machine learning analysis for remote prenatal care |
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Archīum Ateneo |
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2020 |
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https://archium.ateneo.edu/ecce-faculty-pubs/113 https://ieeexplore.ieee.org/document/9293890 |
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