Machine Learning-based Anomaly Recognition System (MARS)
Use of Machine Learning Algorithms for Automated Detection of Fetal Anomalies
調査の概要
詳細な説明
Routine second trimester anomaly scan has become a routine part of antenatal care. Early detection of fetal anomalies permits patient counselling, consideration of termination if detected anomalies are considerable, and arrangement of delivery and immediate neonatal care if indicated. Furthermore, with the expanding role of fetal interventions, early detection of fetal anomalies may expand management options, some of which may lead superior outcomes compared to postnatal interventions.
However, fetal anatomy scan necessitates a particular level of training and expertise, either by sonographers or obstetricians. Unfortunately, availability of experienced personals may be globally limited. Furthermore, first trimester anatomy scan has been evolving rapidly as ultrasound machine continues to develop and clinical research yields more information on first trimester normal standards and abnormal ranges. Accordingly, first trimester scan is anticipated to be a part of routine care in the near future. Although this tool should provide substantial benefits to obstetric patients, this would require more providers with specific training, which is unlikely to be readily available.
Artificial intelligence has been incorporated in the medical field for more than 20 years. With the advancement of deep learning algorithms, deep learning has yielded exceptional accuracy in image recognition. In the last decade, deep learning exhibits high quality performance that may exceed human performance at times. One of the earliest and most prevalent applications of deep learning in medicine are radiology-related.
In the current study, the investigators will create a series of deep learning models that appraise and identify common fetal anomalies in a series of frames including recorded videos or real time ultrasound. Deep learning algorithms will be fed by labelled images of known normal and abnormal findings representing common fetal anomalies for both training and validation. These images will be collected retrospectively through medical records of contributing centers. Their diagnostic performance will be tested on retrospectively collected videos including normal and abnormal findings. In the second stage of the study, These models will be applied to prospectively collected videos of fetal anatomy scan for further validation.
研究の種類
入学 (予想される)
連絡先と場所
研究場所
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Assiut、エジプト、71515
- Assiut Faculty of Medicine - Women Health Hospital
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Aswan、エジプト、81528
- Aswan faculty of medicine
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参加基準
適格基準
就学可能な年齢
健康ボランティアの受け入れ
受講資格のある性別
サンプリング方法
調査対象母集団
説明
Inclusion Criteria:
- Pregnant women between 18 and 45 years
- Available ultrasound image with clear findings
- postnatal confirmation of diagnosis
Exclusion Criteria:
- Absence of research authorization on medical records
研究計画
研究はどのように設計されていますか?
デザインの詳細
コホートと介入
グループ/コホート |
介入・治療 |
|---|---|
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Fetuses with normal anatomy
Fetuses with normal anatomy scan who demonstrate no structural abnormalities of different systems (CNS, chest and heart, abdomen, skeletal system)
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Routine 2 dimensional Ultrasound used to screen fetuses for congenital anomalies
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Fetuses with abnormal anatomy
Fetuses with abnormal anatomy scan who demonstrate any structural abnormalities that can be detected with ultrasound
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Routine 2 dimensional Ultrasound used to screen fetuses for congenital anomalies
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この研究は何を測定していますか?
主要な結果の測定
結果測定 |
メジャーの説明 |
時間枠 |
|---|---|---|
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Diagnostic accuracy
時間枠:Fetuses between 10 weeks and 32 weeks of gestation
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Diagnostic accuracy of deep learning models in identifying major fetal structural anomalies
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Fetuses between 10 weeks and 32 weeks of gestation
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協力者と研究者
研究記録日
主要日程の研究
研究開始 (予想される)
一次修了 (予想される)
研究の完了 (予想される)
試験登録日
最初に提出
QC基準を満たした最初の提出物
最初の投稿 (実際)
学習記録の更新
投稿された最後の更新 (実際)
QC基準を満たした最後の更新が送信されました
最終確認日
詳しくは
本研究に関する用語
追加の関連 MeSH 用語
その他の研究ID番号
- OBG-AI21-P1
医薬品およびデバイス情報、研究文書
米国FDA規制医薬品の研究
米国FDA規制機器製品の研究
この情報は、Web サイト clinicaltrials.gov から変更なしで直接取得したものです。研究の詳細を変更、削除、または更新するリクエストがある場合は、register@clinicaltrials.gov。 までご連絡ください。 clinicaltrials.gov に変更が加えられるとすぐに、ウェブサイトでも自動的に更新されます。
Ultrasoundの臨床試験
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Sarasota Memorial Health Care System招待による登録
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Academisch Medisch Centrum - Universiteit van Amsterdam...完了
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Helse Nord-Trøndelag HFNorwegian University of Science and Technology; St. Olavs Hospital完了
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Piazza della Vittoria 14 Studio Medico - Ginecologia...募集
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Innovative Medical完了