破骨细胞
自然(考古学)
化学
细胞分化
计算生物学
生物
生物化学
体外
基因
古生物学
作者
Yuki Hitora,Mako Hokaguchi,Yusaku Sadahiro,Takumi Higaki,Sachiko Tsukamoto
标识
DOI:10.1021/acs.jnatprod.4c00640
摘要
Natural products that inhibit osteoclast differentiation are promising therapeutic and preventive agents for osteoporosis. Conventionally, identifying osteoclast differentiation involves visual inspection of the microscope images of stained osteoclasts. In this study, a supervised machine learning model was developed to classify bright-field microscope images of osteoclasts without staining. The model was used to screen a compound library, and osteoclast differentiation inhibitors were identified, demonstrating the validity of our method. Next, an in-house library of fungal extracts was screened, and pinolidoxin was revealed as an inhibitor of osteoclast differentiation. Our machine learning method enabled accurate, objective, and high-throughput evaluation of osteoclast differentiation and efficient screening of the inhibitors from natural product extracts. This study represents the first machine learning classification developed to evaluate the inhibitory activity of natural products in osteoclast differentiation.
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