Exosomes derived from mesenchymal stem cells may be a viable therapeutic approach for Parkinson's disease

Welcome to Our Exclusive Webinar Event

The medical community is searching for an effective treatment for a serious global health threat because of the short-term symptoms and dose-dependent side effects of pharmacological treatment for neurodegenerative diseases. In 1980,the use of fetal nerve tissue to treat Parkinson’s disease (PD) led to the identification of the therapeutic potential of stem cells for the treatment of neurodegenerative disorders. This treatment strategy for neurological disease therapy has been developed through extensive studies. Nowadays, stem cells and their secretions such as exosomes are widely recognized as a therapeutic environment for the treatment of neurodegenerative illnesses. The potential of this approach lies in neuroregeneration, neuroprotection, and modulating inflammation, oxidative stress, and mitochondrial function.
In this webinar, our expert speakers will delve into the latest findings and advancements in the field, covering topics such as: 
  • Exosome biology and their role in cell-to-cell communication
  • The potential of exosomes derived from mesenchymal stem cells in neurodegeneration and neuroprotection.
  • Exosome-based therapies for Parkinson’s disease are being explored through pre-clinical studies and clinical trials.
  • The next steps and challenges for converting Exosome research into clinical practices

Join us to explore the exciting possibilities of exosome-based treatments for Parkinson’s disease and discover how this innovative approach may revolutionize the lives of patients worldwide.

Speaker :Dr. Lipi Singh, Ph.D., Dr. Lipi Singh completed her stem cell research  on diabetes at the City of Hope National Medical Centre and Beckman Research Centre, California, USA. Dr. Lipi has over 18 years of experience in the field of Stem Cell Biology and Regenerative Medicine.

Webinar Date: 07 th June 2024

Webinar Time: 4:00 P.M. IST

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