Invention Publication
- Patent Title: MACHINE LEARNING MODELS FOR PREDICTION OF UNPLANNED CESAREAN DELIVERY
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Application No.: US18280254Application Date: 2022-03-03
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Publication No.: US20240170147A1Publication Date: 2024-05-23
- Inventor: Abraham TSUR , Raanan MEYER , Roni EILENBERG
- Applicant: Tel HaShomer Medical Research Infrastructure and Services Ltd.
- Applicant Address: IL Ramat-Gan
- Assignee: Tel HaShomer Medical Research Infrastructure and Services Ltd.
- Current Assignee: Tel HaShomer Medical Research Infrastructure and Services Ltd.
- Current Assignee Address: IL Ramat-Gan
- International Application: PCT/IL2022/050244 2022.03.03
- Date entered country: 2023-09-04
- Main IPC: G16H50/20
- IPC: G16H50/20 ; A61B5/00 ; A61B8/08 ; G16H50/30

Abstract:
There is provided a computer implemented method of training a machine learning model for prediction of unplanned Cesarean Delivery (uCD), comprising: creating or receiving a multi-record training dataset, wherein a record comprises: at least one fetal biometric parameter of a sample fetus obtained by an ultrasonography device, at least one personal parameter of a sample mother of the sample fetus, and a ground truth indicating whether a birth of the sample fetus by the sample mother was a uCD, and training the machine learning model on the multi-record training dataset for generating an outcome indicating likelihood of uCD for a target mother in response to an input of at least one fetal biometric parameter of a target fetus of the target mother and at least one personal parameter of the target mother.
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