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feat: ✨ Virtual Monthly Spaker Series Xiaoqian Jiang
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title: 'Virtual Monthly Speaker Series' | ||
authors: | ||
- 'Xiaoqian Jiang' | ||
date: '2023-12-05' | ||
categories: | ||
- 'Virtual Monthly Spaker Series' | ||
heroImage: 'https://i.imgur.com/pcliq1b.jpg' | ||
subtitle: 'Dr. Xiaoqian Jiang: Sensitive Data Detection with High-Throughput Machine Learning Models in Electronic Health Records' | ||
tags: | ||
- 'Virtual Monthly Speaker Series' | ||
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Every month, ETAI will invite a speaker to participate in a monthly speaker series related to ethical issues in biomedical research. The monthly speaker series is part of our module's milestones relating to engagement and reflection on ethics with the AI-READI team. | ||
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## December 2023: | ||
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This month, Dr. Jiang explored how a groundbreaking discovery was utilized to generate 30 metadata-based features through machine learning for the automatic detection of PHI fields in structured Electronic Health Record (EHR) data. The model, trained on diverse EHR databases, attained an impressive 99% accuracy in identifying PHI-related fields for unseen datasets, presenting significant implications for industries dealing with sensitive data.You can find a recording to his talk [here](https://public.3.basecamp.com/p/oyZRyATXk54EDGtEv3vXY9Mb) |