Maximizing Data Quality in Life Science Data Acquisition and Analysis

Watch Now

Sponsored by:

ADInstruments
Date:
October 4, 2018
No items found.

Brandon Bucher, Head of Research at ADInstruments, shares best practices, technical considerations and expert advice on how to avoid common data acquisition system and data analysis mistakes in order to produce higher quality data.

There are many variables to consider when designing a preclinical research experiment, and while scientists plan their studies to a high degree, the critical function of digital data acquisition and analysis systems is often overlooked. The technical nature of this subject can be daunting, demanding time and head-space from extremely busy investigators; however, understanding the essential elements of digital data acquisition and analysis is fundamental to ensure high quality experimentation translates to high quality results.

In this webinar, Brandon Bucher, Head of Research at ADInstruments, lifts the veil on common, costly and harmful data acquisition and analysis errors, showing how to avoid them in order to produce optimal data and quality results. He covers key concepts such as setting up your data acquisition system correctly, proper signal conditioning, artifact rejection and preparing data for analysis, exporting data and how elements of your experimental protocol may impact decisions made at each stage.

Presenters

Brandon Bucher

ADInstruments
Head of Research

Brandon Bucher has spent the last 11 years working alongside life science researchers at ADInstruments, leveraging that experience to advise investigators on how to get the most out of their scientific instrumentation and achieve high-quality results in their data acquisition software.

Read More

Sponsor

ADInstruments

Established in 1988, ADInstruments develops high performance digital data acquisition and analysis solutions for biomedical research and life science education.

Related Content

Related Content