Recurrent spontaneous abortion (RSA), a significant reproductive challenge, involves multiple pregnancy losses and impacts fertility. Although various factors contribute to RSA, immune system dysfunction is frequently implicated. Recent technological advancements in bioinformatics, particularly high-throughput sequencing and computational modeling, have enabled a more detailed examination of immune responses associated with RSA. This text explores how bioinformatics tools, including gene expression analysis, machine learning, and network analysis, facilitate the prediction of immune factors relevant to RSA. Additionally, it reviews current progress and potential future applications in personalized treatment strategies.
Abdollahi, E. (2025). Comprehensive Analysis of Immune Responses in Recurrent Pregnancy Loss via Bioinformatics: A Big Picture. International Journal of Clinical Medical Research, 3(2), 54. doi:10.61466/ijcmr3020004
ACS Style
Abdollahi, E. Comprehensive Analysis of Immune Responses in Recurrent Pregnancy Loss via Bioinformatics: A Big Picture. International Journal of Clinical Medical Research, 2025, 3, 54. doi:10.61466/ijcmr3020004
AMA Style
Abdollahi E. Comprehensive Analysis of Immune Responses in Recurrent Pregnancy Loss via Bioinformatics: A Big Picture. International Journal of Clinical Medical Research; 2025, 3(2):54. doi:10.61466/ijcmr3020004
Chicago/Turabian Style
Abdollahi, Elham 2025. "Comprehensive Analysis of Immune Responses in Recurrent Pregnancy Loss via Bioinformatics: A Big Picture" International Journal of Clinical Medical Research 3, no.2:54. doi:10.61466/ijcmr3020004
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ACS Style
Abdollahi, E. Comprehensive Analysis of Immune Responses in Recurrent Pregnancy Loss via Bioinformatics: A Big Picture. International Journal of Clinical Medical Research, 2025, 3, 54. doi:10.61466/ijcmr3020004
AMA Style
Abdollahi E. Comprehensive Analysis of Immune Responses in Recurrent Pregnancy Loss via Bioinformatics: A Big Picture. International Journal of Clinical Medical Research; 2025, 3(2):54. doi:10.61466/ijcmr3020004
Chicago/Turabian Style
Abdollahi, Elham 2025. "Comprehensive Analysis of Immune Responses in Recurrent Pregnancy Loss via Bioinformatics: A Big Picture" International Journal of Clinical Medical Research 3, no.2:54. doi:10.61466/ijcmr3020004
APA style
Abdollahi, E. (2025). Comprehensive Analysis of Immune Responses in Recurrent Pregnancy Loss via Bioinformatics: A Big Picture. International Journal of Clinical Medical Research, 3(2), 54. doi:10.61466/ijcmr3020004
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References
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