Records 1-5 (of 5 Records) |
Query Trace: PMAIP1[original query]>>PMAIP1[Gene] |
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Clinical presentation of COVID-19 - a model derived by a machine learning algorithm. Yousef Malik, et al. Journal of integrative bioinformatics 2021 3 0. ![]() ![]() |
Modeling COVID-19 epidemic in Heilongjiang province, China. Sun Tingzhe, et al. Chaos, solitons, and fractals 2020 9 0. 109949 ![]() ![]() |
Epidemiological control measures and predicted number of infections for SARS-CoV-2 pandemic: case study Serbia march-april 2020. Djurovic Igor, et al. Heliyon 2020 6 0. (6) e04238 ![]() ![]() |
Effect of weather on COVID-19 spread in the US: A prediction model for India in 2020. Gupta Sonal, et al. The Science of the total environment 2020 8 0. 138860 ![]() |
Basic epidemiological parameter values from data of real-world in mega-cities: the characteristics of COVID-19 in Beijing, China. Wang Xiaoli, et al. BMC infectious diseases 2020 7 0. (1) 526 ![]() ![]() ![]() |
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