This year’s Black History Month theme is Black Resistance, which gives us the opportunity to reflect on how African Americans have resisted historic and ongoing oppression.
Explore infertility research at the Massachusetts General Hospital Fertility Center and search open clinical trials and medical studies.
The Vincent Center for Reproductive Biology consists of basic and clinical scientists whose primary research emphasis includes infertility, aging and cancer as they pertain to the ovary and uterus. The center provides an optimal environment for individuals who are interested in integrating clinical and basic sciences and have a strong desire to pursue a career in academic research.
Search for clinical trials and research studies currently seeking participants.
START (Symptom Tracking in Assisted Reproductive Technologies) Study
The START Study tracks women’s mood symptoms throughout infertility treatment cycles. Study participants include women with a history of major depression or bipolar depression currently in remission who are planning or are under going infertility treatment. (Ongoing but not enrolling)
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