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Live Webinar- Analyzing Your Biggest Data - Practical Text Mining for Regulated Companies

16 July 2014, Houston, United States


Introduction
Most pharmaceutical, biopharmaceutical, and medical device organizations are analyzing structured numerical (and categorical) data: clinical trials, R&D, process development, process monitoring, sales and marketing, product supply, commercial manufacturing. The collection and analysis of this data is prevalent throughout most organizations. However, the majority of stored data is not numerical; it is in the form of unstructured text in reports and documents. How do you analyze product complaints to see if there are systemic themes? How do these systemic themes relate to minor, major, and severe outcomes? How do you conduct analysis on the free-form sections of non-conformances? How do you analyze what people are writing about your products on social media? Or even what people are writing on financial blogs? Would it be beneficial to analyze the most recent recall information and/or inspection observations from fda.gov? New text analysis techniques can be easily implemented to find previously unknown relationships from these collections of unstructured data. These methods can discover useful and actionable compliance and business insights.

Most companies are spending resources to collect unstructured text data but are not doing anything with it. In this webinar, participants will be guided through end-to-end examples starting from assembling disparate text sources, followed by creating a structured dataset, then applying data mining methods such as decision trees, regression, and cluster analysis to discover useful relationships. While relevant theory will be discussed, the focus of the course will be on giving participants an appreciation for the practical application of text mining to real-world applications in FDA-regulated companies.



Description of the topic
It is estimated that approximately 80% of data in most organizations is unstructured, such as text. This webinar will provide an overview of new methods easily implemented to find previously unknown relationships from a collection of unstructured data. Techniques that are used to explore text from various sources (such as survey comments, incident reports, free form data fields, websites, research reports, and social media) will be demonstrated. These methods will show how to discover potentially useful and actionable compliance and business insights. Multiple demonstrations with example datasets that include applications to incident reports, survey results, FDA recalls, inspection observations, and other meaningful case studies applicable to excellence in compliance and business.



Areas Covered In the Seminar

Introduction to Text Mining

Application Example: medical device recalls

Overview of Data Mining

String Processing

Natural Language Processing

Application Examples: accident reports, surveys, information from website crawling and social media, and inspection observations.



Who will benefit

This webinar is designed for pharmaceutical, biopharmaceutical, and medical device professionals who are involved with the analysis of data for making compliance and business decisions
Process Scientist/Engineer

Manufacturing Engineer

Regulatory/Compliance Professional

Project Manager

Business Analyst

Continuous Improvement Professional

Webinar Includes:

Q/A Session with the Expert to ask your question

PDF print only copy of PowerPoint slides

90 Minutes Live Presentation


Certificate of Attendance
Venue
Online

Online, 10777 Westheimer Suite 1100, Houston, Texas, USA, 77042, Houston, 77042, United States

Organised by
compliance2go
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