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Use of Automated Machine Learning for Classifying Hemoperitoneum on Ultrasonographic Images of Morrison's Pouch: A Multicenter Retrospective Studyopen access

Authors
Jeong, DongkilJeong, WonjoonLee, Ji HanPark, Sin-Youl
Issue Date
Jun-2023
Publisher
MDPI AG
Keywords
ultrasonography; automated machine learning; emergency medicine; trauma; hemoperitoneum
Citation
Journal of Clinical Medicine, v.12, no.12
Journal Title
Journal of Clinical Medicine
Volume
12
Number
12
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/25320
DOI
10.3390/jcm12124043
ISSN
2077-0383
2077-0383
Abstract
This study evaluated automated machine learning (AutoML) in classifying the presence or absence of hemoperitoneum in ultrasonography (USG) images of Morrison's pouch. In this multicenter, retrospective study, 864 trauma patients from trauma and emergency medical centers in South Korea were included. In all, 2200 USG images (1100 hemoperitoneum and 1100 normal) were collected. Of these, 1800 images were used for training and 200 were used for the internal validation of AutoML. External validation was performed using 100 hemoperitoneum images and 100 normal images collected separately from a trauma center that were not included in the training and internal validation sets. Google's open-source AutoML was used to train the algorithm in classifying hemoperitoneum in USG images, followed by internal and external validation. In the internal validation, the sensitivity, specificity, and area under the receiver operating characteristic (AUROC) curve were 95%, 99%, and 0.97, respectively. In the external validation, the sensitivity, specificity, and AUROC were 94%, 99%, and 0.97, respectively. The performances of AutoML in the internal and external validation were not statistically different (p = 0.78). A publicly available, general-purpose AutoML can accurately classify the presence or absence of hemoperitoneum in USG images of the Morrison's pouch of real-world trauma patients.
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