• After obtaining new data, a comparison of performance with the existing AI model is necessary to use the new data in the AI system. Even if the new data is judged by humans to be similar to the existing training data, the new data may differ from the data attributes the AI learned from the existing data.
• It is necessary to conduct performance evaluation and analysis using the most representative AI algorithm in healthcare for the new data. Refer to the following processes for performance evaluation due to obtaining new data. Working with healthcare professionals is essential in these processes.
✓ Acquire representative AI model and previous training model for performance evaluation and comparative analysis
✓ Choose appropriate performance evaluation indicators for the healthcare AI and model
✓ Design tests for performance evaluation (e.g. choose a quantitative or qualitative testing method, set parameters of testing models, detailed planning of the test)
✓ Conduct tests and analyze results (e.g. determine the redesigning, expanding, and retraining of model if needed, or assess new data based on the results)