Embryo Grading after In Vitro Fertilization using YOLO

In vitro fertilization is an implementation of Assistive Reproductive Technology. This technology can produce embryos outside the mother's womb by manipulating gametes outside the human body. The success rate of in vitro fertilization is the selection of good-grading embryos. In this study, the...

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Main Authors: Dewi Ananta Hakim, Ade Jamal, Anto Satriyo Nugroho, Ali Akbar Septiandri, Budi Wiweko
Format: Article
Language:English
Published: Udayana University, Institute for Research and Community Services 2022-11-01
Series:Lontar Komputer
Online Access:https://ojs.unud.ac.id/index.php/lontar/article/view/91136
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author Dewi Ananta Hakim
Ade Jamal
Anto Satriyo Nugroho
Ali Akbar Septiandri
Budi Wiweko
author_facet Dewi Ananta Hakim
Ade Jamal
Anto Satriyo Nugroho
Ali Akbar Septiandri
Budi Wiweko
author_sort Dewi Ananta Hakim
collection DOAJ
description In vitro fertilization is an implementation of Assistive Reproductive Technology. This technology can produce embryos outside the mother's womb by manipulating gametes outside the human body. The success rate of in vitro fertilization is the selection of good-grading embryos. In this study, the authors used Yolo Version 3 to perform object detection objectively by introducing grades for each embryo image. The author uses an embryo image sourced from the Indonesian Medical Education and Research Institute with information on the quality of the embryo. In this study, the author separated the data into two schemes. The first scheme separates data into training data of 70%, 15% validation data, and 15% for testing data. The second scheme uses a Stratified K-Fold Cross-Validation with a fold value =3. In training, the writer configures the values ??of Max Batches=6000, Steps=4800,5400, Batch=64, and Subdivision=16 by doing image augmentation (saturation=1.5, exposure=1.5, hue=0.1, jitter=0.3, random=1). For each of the obtained mAP (Mean Average Precision) values ??for data separation schemes, one is 100.00% in the 6000th iteration, while for the two-data separation scheme, the highest mAP is 97.33%.% in the fold=3 and 5000th iteration. It means that both separation schemes are sufficient in terms of mAP.
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spelling doaj.art-c1476bb7372f460592a20152090f547e2022-12-22T03:01:53ZengUdayana University, Institute for Research and Community ServicesLontar Komputer2088-15412541-58322022-11-0113313714910.24843/LKJITI.2022.v13.i03.p0191136Embryo Grading after In Vitro Fertilization using YOLODewi Ananta Hakim0Ade Jamal1Anto Satriyo Nugroho2Ali Akbar Septiandri3Budi Wiweko4Faculty of Science and Technology, University Al Azhar Indonesia, IndonesiaUniversitas Al-Azhar IndonesiaNational Research and Innovation Agency, IndonesiaFaculty of Science and Technology, University Al Azhar Indonesia, IndonesiaIndonesian Medical Education and Research Institution (IMERI), Faculty of Medicine, Indonesia University, IndonesiaIn vitro fertilization is an implementation of Assistive Reproductive Technology. This technology can produce embryos outside the mother's womb by manipulating gametes outside the human body. The success rate of in vitro fertilization is the selection of good-grading embryos. In this study, the authors used Yolo Version 3 to perform object detection objectively by introducing grades for each embryo image. The author uses an embryo image sourced from the Indonesian Medical Education and Research Institute with information on the quality of the embryo. In this study, the author separated the data into two schemes. The first scheme separates data into training data of 70%, 15% validation data, and 15% for testing data. The second scheme uses a Stratified K-Fold Cross-Validation with a fold value =3. In training, the writer configures the values ??of Max Batches=6000, Steps=4800,5400, Batch=64, and Subdivision=16 by doing image augmentation (saturation=1.5, exposure=1.5, hue=0.1, jitter=0.3, random=1). For each of the obtained mAP (Mean Average Precision) values ??for data separation schemes, one is 100.00% in the 6000th iteration, while for the two-data separation scheme, the highest mAP is 97.33%.% in the fold=3 and 5000th iteration. It means that both separation schemes are sufficient in terms of mAP.https://ojs.unud.ac.id/index.php/lontar/article/view/91136
spellingShingle Dewi Ananta Hakim
Ade Jamal
Anto Satriyo Nugroho
Ali Akbar Septiandri
Budi Wiweko
Embryo Grading after In Vitro Fertilization using YOLO
Lontar Komputer
title Embryo Grading after In Vitro Fertilization using YOLO
title_full Embryo Grading after In Vitro Fertilization using YOLO
title_fullStr Embryo Grading after In Vitro Fertilization using YOLO
title_full_unstemmed Embryo Grading after In Vitro Fertilization using YOLO
title_short Embryo Grading after In Vitro Fertilization using YOLO
title_sort embryo grading after in vitro fertilization using yolo
url https://ojs.unud.ac.id/index.php/lontar/article/view/91136
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AT adejamal embryogradingafterinvitrofertilizationusingyolo
AT antosatriyonugroho embryogradingafterinvitrofertilizationusingyolo
AT aliakbarseptiandri embryogradingafterinvitrofertilizationusingyolo
AT budiwiweko embryogradingafterinvitrofertilizationusingyolo