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APA Citation

    Dommer, A., Casalino, L., Kearns, F., Rosenfeld, M., Wauer, N., Ahn, S., Russo, J., Oliveira, S., Morris, C., Bogetti, A., Trifan, A., Brace, A., Sztain, T., Clyde, A., Ma, H., Chennubhotla, C., Lee, H., Turilli, M., Khalid, S., Tamayo-Mendoza, T., Welborn, M., Christensen, A., Smith, D. G., Qiao, Z., Sirumalla, S. K., O'Connor, M., Manby, F., Anandkumar, A., Hardy, D., Phillips, J., Stern, A., Romero, J., Clark, D., Dorrell, M., Maiden, T., Huang, L., McCalpin, J., Woods, C., Gray, A., Williams, M., Barker, B., Rajapaksha, H., Pitts, R., Gibbs, T., Stone, J., Zuckerman, D. M., Mulholland, A. J., Miller, T., Jha, S., Ramanathan, A., Chong, L., & Amaro, R. E. (2023). #COVIDisAirborne: AI-enabled multiscale computational microscopy of delta SARS-CoV-2 in a respiratory aerosol. International journal of high performance computing applications, 37, 28–44. http://access.bl.uk/ark:/81055/vdc_100171209614.0x000009
  
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