As we mentioned in the early days of the pandemic, COVID-19 has been accompanied by a rise in cyberattacks worldwide. At the same time, the global response to the pandemic has accelerated interest in the collection, analysis, and sharing of data – specifically, patient data – to address urgent issues, such as population management in hospitals, diagnoses and detection of medical conditions, and vaccine development, all through the use of artificial intelligence (AI) and machine learning. Typically, AIML churns through huge amounts of real world data to deliver useful results. This collection and use of that data, however, gives rise to legal and practical challenges. Numerous and increasingly strict regulations protect the personal information needed to feed AI solutions. The response has been to anonymize patient health data in time consuming and expensive processes (HIPAA alone requires the removal of 18 types of identifying information). But anonymization is not foolproof and, after stripping data of personally identifiable information, the remaining data may be of limited utility. This is where synthetic data comes in.
U.S. Food and Drug Administration
The Impact of the Ensuring Innovation Act on NCE Exclusivity
By Michelle M. Ovanesian & Colin G. Cabral on
The Ensuring Innovation Act recently became law after passing in the Senate with unanimous, bipartisan support. According to one Senator, the intent of the legislation was to “close loopholes to prevent awarding market exclusivity to products that do not present true innovation and unduly delay cheaper generic from entering the market.” Is this much ado about nothing, or much to be concerned about?