Clinical De-identification for Portuguese
收藏Snowflake2024-09-09 更新2024-09-10 收录
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资源简介:
The Clinical De-Identification model is designed to recognize and anonymize PHI in Portuguese-language clinical notes. It employs state-of-the-art natural language processing techniques to detect sensitive information such as patient names, addresses, medical record numbers, and other identifiers. Once identified, the PHI is effectively masked or obfuscated, rendering the text safe for broader use while maintaining its informational integrity.
Use the provided Streamlit playground application to test this service.
**Key Features:**
- The model is finely tuned to identify a wide range of PHI elements in medical texts, ensuring comprehensive de-identification.
- The de-identification process aligns with HIPAA and other healthcare privacy regulations, aiding in legal compliance and data protection.
- Ideal for research, analytics, and training purposes, this model enables the safe utilization of medical texts without compromising patient privacy.<br/><br/>
**Covered entities:**
AGE, DATE, PROFESSION, EMAIL, ID, COUNTRY, STREET, DOCTOR, HOSPITAL, PATIENT, URL, IP, ORGANIZATION, PHONE, ZIP, ACCOUNT, SSN, PLATE, SEX and IPADDR.
<br/>This model is a useful asset in the healthcare and research sectors, where the protection of patient privacy is paramount. It allows for the ethical and legal use of valuable medical data, promoting research and analysis while upholding the highest standards of data privacy and security.
提供机构:
John Snow Labs
创建时间:
2024-08-23
搜集汇总
数据集介绍

背景与挑战
背景概述
该数据集专注于葡萄牙语临床笔记的去识别化,利用先进自然语言处理技术检测并匿名化患者姓名、地址等敏感信息,确保符合HIPAA等隐私法规。它支持医疗研究和分析,在保护患者隐私的同时,促进数据的合法、安全使用。
以上内容由遇见数据集搜集并总结生成



