Federated Learning on Patient Data for Privacy-Protecting Polycystic Ovary Syndrome Treatment
The field of women's endocrinology has trailed behind data-driven medical solutions, largely due to concerns over the privacy of patient data. Valuable datapoints about hormone levels or menstrual cycling could expose patients who suffer from comorbidities or terminate a pregnancy, violating th...
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Zusammenfassung: | The field of women's endocrinology has trailed behind data-driven medical
solutions, largely due to concerns over the privacy of patient data. Valuable
datapoints about hormone levels or menstrual cycling could expose patients who
suffer from comorbidities or terminate a pregnancy, violating their privacy. We
explore the application of Federated Learning (FL) to predict the optimal drug
for patients with polycystic ovary syndrome (PCOS). PCOS is a serious hormonal
disorder impacting millions of women worldwide, yet it's poorly understood and
its research is stunted by a lack of patient data. We demonstrate that a
variety of FL approaches succeed on a synthetic PCOS patient dataset. Our
proposed FL models are a tool to access massive quantities of diverse data and
identify the most effective treatment option while providing PCOS patients with
privacy guarantees. |
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DOI: | 10.48550/arxiv.2308.11220 |