Improving tractability of Clinical Decision Support system

Clinical Decision Support System (CDSS) is a promising tool that can alleviate the high medical error rate. However, most of the CDSS are not adopted in clinical settings due to the lack of trust amongst the physicians. Thus, the development of CDSS should cater to the psychological need of physicians. One major issue preventing the wide acceptance of CDSS is the tractability of the system. Hence, in this paper, an attempt is made to improve the system tractability. One possible approach is proposed to improve the tractability of present CDSS.

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