06-1aHave you implemented procedural and technical measures to eliminate human bias?
• With the limited data retained by medical institutions, it is difficult to acquire the necessary data for commercialization, and datasets must be composed appropriately for the purpose by using collected data. Here, the data may be rare due to the nature of the disease, or there could be human bias such as imbalanced data due to bias towards a specific group. Therefore, measures to mitigate these issues must be considered.
• Bias can be mitigated through a process of generating synthetic data based on biased real-world data and obtaining diverse data. However, synthetic data skewed by a worker can produce results completely different from real-world data, resulting in human bias due to variations among workers. Some of the good measures would be preparing data collection work guidelines, recruiting a diverse group of workers to avoid concentration of particular backgrounds and inclinations, and assuring the quality of synthetic data.