Clinical investigations to calculate nuchal translucency using F-LNET
Background: According to ongoing research, assessing nuchal translucency (NT) in ultrasound pictures can help to identify fetal development that deviates from the norm. The chance of chromosomal abnormalities in a newborn is predicted by the nuchal translucency (NT) width in ultrasound sonography pi...
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Format: | Article |
Language: | English |
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Creative Pharma Assent
2024-02-01
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Series: | Journal of Applied Pharmaceutical Research |
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Online Access: | https://japtronline.com/index.php/joapr/article/view/435 |
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author | Kalyani Chaudhari Shruti Oza |
author_facet | Kalyani Chaudhari Shruti Oza |
author_sort | Kalyani Chaudhari |
collection | DOAJ |
description | Background: According to ongoing research, assessing nuchal translucency (NT) in ultrasound pictures can help to identify fetal development that deviates from the norm. The chance of chromosomal abnormalities in a newborn is predicted by the nuchal translucency (NT) width in ultrasound sonography pictures performed on the child between 11 and 14 weeks of gestation. Method: Deeply learned convolutional networks have recently significantly improved NT region detection performance. This paper discusses a novel approach to learning a cutting-edge NT Region identification algorithm. To address the difficulty of improving the accuracy of NT recognition in various lighting and posture conditions, a Framework Learning Network (F-LNET) is employed. Discussion: The limitations of the current NT estimating technique include findings that are unpredictable and intra-personal, inter-personal, and inter-variation restrictions. On the other hand, existing solutions have a high processing overhead and are, hence, unsuitable for rapid NT limiting and localization, which is critical for reliable recognition. However, current methods could be better for quick NT limiting and localization, which is essential for trustworthy identification schemes because of their significant processing overhead. The suggested automated clinical finding approach, which computes the error between human and automated measurements, is very beneficial to both doctors and society at large. Conclusion: The suggested way reduces the error to 0.42, whereas the error of other methods ranges from 0.8 to 1.1. |
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institution | Directory Open Access Journal |
issn | 2348-0335 |
language | English |
last_indexed | 2024-04-24T19:11:30Z |
publishDate | 2024-02-01 |
publisher | Creative Pharma Assent |
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series | Journal of Applied Pharmaceutical Research |
spelling | doaj.art-3636a63816254aed9eaa834756f358fe2024-03-26T09:28:02ZengCreative Pharma AssentJournal of Applied Pharmaceutical Research2348-03352024-02-01121596410.18231/j.joapr.2024.12.1.59.64436Clinical investigations to calculate nuchal translucency using F-LNETKalyani Chaudhari0Shruti Oza1Dept. of Electronics, Dept. of Electronics and Telecommunication, Bharati Vidyapeeth (Deemed to be University) College of Engg. Pune, India, Bharati Vidyapeeth (Deemed to be University) College of Engg. PuneDept. of Electronics, Dept. of Electronics and Telecommunication, Bharati Vidyapeeth (Deemed to be University) College of Engg. Pune, India, Bharati Vidyapeeth (Deemed to be University) College of Engg. PuneBackground: According to ongoing research, assessing nuchal translucency (NT) in ultrasound pictures can help to identify fetal development that deviates from the norm. The chance of chromosomal abnormalities in a newborn is predicted by the nuchal translucency (NT) width in ultrasound sonography pictures performed on the child between 11 and 14 weeks of gestation. Method: Deeply learned convolutional networks have recently significantly improved NT region detection performance. This paper discusses a novel approach to learning a cutting-edge NT Region identification algorithm. To address the difficulty of improving the accuracy of NT recognition in various lighting and posture conditions, a Framework Learning Network (F-LNET) is employed. Discussion: The limitations of the current NT estimating technique include findings that are unpredictable and intra-personal, inter-personal, and inter-variation restrictions. On the other hand, existing solutions have a high processing overhead and are, hence, unsuitable for rapid NT limiting and localization, which is critical for reliable recognition. However, current methods could be better for quick NT limiting and localization, which is essential for trustworthy identification schemes because of their significant processing overhead. The suggested automated clinical finding approach, which computes the error between human and automated measurements, is very beneficial to both doctors and society at large. Conclusion: The suggested way reduces the error to 0.42, whereas the error of other methods ranges from 0.8 to 1.1.https://japtronline.com/index.php/joapr/article/view/435deep learningnuchal translucencyframework aware deep learning networkf-lnet |
spellingShingle | Kalyani Chaudhari Shruti Oza Clinical investigations to calculate nuchal translucency using F-LNET Journal of Applied Pharmaceutical Research deep learning nuchal translucency framework aware deep learning network f-lnet |
title | Clinical investigations to calculate nuchal translucency using F-LNET |
title_full | Clinical investigations to calculate nuchal translucency using F-LNET |
title_fullStr | Clinical investigations to calculate nuchal translucency using F-LNET |
title_full_unstemmed | Clinical investigations to calculate nuchal translucency using F-LNET |
title_short | Clinical investigations to calculate nuchal translucency using F-LNET |
title_sort | clinical investigations to calculate nuchal translucency using f lnet |
topic | deep learning nuchal translucency framework aware deep learning network f-lnet |
url | https://japtronline.com/index.php/joapr/article/view/435 |
work_keys_str_mv | AT kalyanichaudhari clinicalinvestigationstocalculatenuchaltranslucencyusingflnet AT shrutioza clinicalinvestigationstocalculatenuchaltranslucencyusingflnet |