- 专利标题: MACHINE LEARNING MODELS FOR PREDICTION OF UNPLANNED CESAREAN DELIVERY
-
申请号: PCT/IL2022/050244申请日: 2022-03-03
-
公开(公告)号: WO2022185320A1公开(公告)日: 2022-09-09
- 发明人: TSUR, Abraham , MEYER, Raanan , EILENBERG, Roni
- 申请人: TEL HASHOMER MEDICAL RESEARCH INFRASTRUCTURE AND SERVICES LTD.
- 申请人地址: The Chaim Sheba Medical Center
- 专利权人: TEL HASHOMER MEDICAL RESEARCH INFRASTRUCTURE AND SERVICES LTD.
- 当前专利权人: TEL HASHOMER MEDICAL RESEARCH INFRASTRUCTURE AND SERVICES LTD.
- 当前专利权人地址: The Chaim Sheba Medical Center
- 代理机构: EHRLICH, Gal et al.
- 优先权: US63/156,872 2021-03-04
- 主分类号: A61B5/00
- IPC分类号: A61B5/00 ; A61B5/053 ; A61B5/05
摘要:
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 multirecord 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.