Inherent Bias in Artificial Intelligence-Based Decision Support Systems for Healthcare
Abstract
1. Understanding the Concept of Bias
2. Information Explosion and the Need for Reliability
3. Problems in Processing Knowledge
4. Possible Solutions
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Factors Leading to Knowledge Bias | Description |
---|---|
Experimental bias | Inherent bias in experiment leading to inaccurate outcomes, and pre-existing beliefs leading to wrong perceptions such as hindsight |
Problems with information reliability | Synthesizing systems based on false or partially accurate data |
Limited expert knowledge | Domain experts may have limited knowledge of their own domain that will limit the knowledge programmed into the system |
Shallow information | Implicit knowledge contained in systems such as electronic health records may be shallow and may not include the necessary details |
Factors Leading to Processing Bias | Description |
---|---|
Bias in the selected algorithm | The selected data processing algorithm may not be appropriate for the required decision support process |
Bias in tacit knowledge used for feedback | Feedback provided by knowledge providers may be biased and may create bias if used to modify the processing structure |
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Gurupur, V.; Wan, T.T.H. Inherent Bias in Artificial Intelligence-Based Decision Support Systems for Healthcare. Medicina 2020, 56, 141. https://doi.org/10.3390/medicina56030141
Gurupur V, Wan TTH. Inherent Bias in Artificial Intelligence-Based Decision Support Systems for Healthcare. Medicina. 2020; 56(3):141. https://doi.org/10.3390/medicina56030141
Chicago/Turabian StyleGurupur, Varadraj, and Thomas T. H. Wan. 2020. "Inherent Bias in Artificial Intelligence-Based Decision Support Systems for Healthcare" Medicina 56, no. 3: 141. https://doi.org/10.3390/medicina56030141
APA StyleGurupur, V., & Wan, T. T. H. (2020). Inherent Bias in Artificial Intelligence-Based Decision Support Systems for Healthcare. Medicina, 56(3), 141. https://doi.org/10.3390/medicina56030141