Open Access
| Issue |
BIO Web Conf.
Volume 233, 2026
9th International Conference on Advances in Biosciences and Biotechnology: Emerging Innovations in Biomedical and Bioengineering Sciences (ICABB 2026)
|
|
|---|---|---|
| Article Number | 01003 | |
| Number of page(s) | 6 | |
| Section | Biomedical and Health Innovations | |
| DOI | https://doi.org/10.1051/bioconf/202623301003 | |
| Published online | 23 April 2026 | |
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