A Deep Learning Pipeline Using Prior Knowledge for Automatic Evaluation of Placenta Accreta Spectrum Disorders With MRI

Author:

Wang Haijie1ORCID,Wang Yida1,Zhang He2,Yin Xuan2,Wang Chenglong1,Lu Yuanyuan3,Song Yang4ORCID,Zhu Hao5,Yang Guang1ORCID

Affiliation:

1. Shanghai Key Laboratory of Magnetic Resonance East China Normal University Shanghai China

2. Department of Radiology, Obstetrics and Gynecology Hospital Fudan University Shanghai China

3. Department of Radiology, Shanghai First Maternity and Infant Health Hospital, School of Medicine Tongji University Shanghai China

4. MR Scientific Marketing Siemens Healthineers China Shanghai China

5. Department of Obstetrics, Obstetrics and Gynecology Hospital Fudan University Shanghai China

Abstract

BackgroundThe diagnosis of prenatal placenta accreta spectrum (PAS) with magnetic resonance imaging (MRI) is highly dependent on radiologists' experience. A deep learning (DL) method using the prior knowledge that PAS‐related signs are generally found along the utero‐placental borderline (UPB) may help radiologists, especially those with less experience, to mitigate this issue.PurposeTo develop a DL tool for antenatal diagnosis of PAS using T2‐weighted MR images.Study TypeRetrospective.SubjectsFive hundred and forty pregnant women with clinically suspected PAS disorders from two institutions, divided into training (409), internal test (103), and external test (28) datasets.Field Strength/SequenceSagittal T2‐weighted fast spin echo sequence at 1.5 T and 3 T.AssessmentAn nnU‐Net was trained for placenta segmentation. The UPB straightening approach was used to extract the utero‐placental boundary region. The UPB image was then fed into DenseNet‐PAS for PAS diagnosis. DenseNet‐PP learnt placental position information to improve the PAS diagnosis performance. Three radiologists with 8, 10, and 12 years of experience independently evaluated the images. Two radiologists marked the placenta tissue. Histopathological findings were the reference standard.Statistical TestsArea under the curve (AUC) was used to evaluate the classification. Dice coefficient evaluated the segmentation between radiologists and the model performance. The Mann–Whitney U‐test or the chi‐squared test assessed the significance of differences. Decision curve analysis was used to determine clinical effectiveness. DeLong's test was used to compare AUCs.ResultsOf the 540 patients, 170 had PAS disorders confirmed by histopathology. The DL model using UPB images and placental position yielded the highest AUC of 0.860 and 0.897 in internal test and external test cohorts, respectively, significantly exceeding the performance of three radiologists (internal test AUC, 0.737–0.770).Data ConclusionBy extracting the UPB image, this fully automatic DL pipeline achieved high accuracy and may assist radiologists in PAS diagnosis using MRI.Level of Evidence3Technical EfficacyStage 2

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Radiology, Nuclear Medicine and imaging

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