Acknowledgement
이 논문은 2021년도 정부(과학기술정보통신부)의 재원으로 한국연구재단의 지원(NRF-2019R1A2C3005212, 딥러닝을 이용한 간암 표적항암제 내성기전 규명 및 이를 극복할 새로운 표적항암제 탐색)과 국토교통부의 스마트시티 혁신인재육성사업의 지원을 받아 수행된 연구임.
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