Acknowledgement
This research was supported by Research Program 2019 funded by Seoul National University College of Medicine Research Foundation. H.S.P and K.J. were supported by the National Institute for Mathematical Sciences (NIMS) grant funded by the Korean government (No. NIMS-B20900000). This work utilized a software for screening of DDH (C-2019-015787) developed by National Institute for Mathematical Sciences.
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