DXplain is a Clinical decision support system (CDSS) available through the World Wide Web that assists clinicians by generating stratified diagnoses based on user input of patient signs and symptoms, laboratory results, and other clinical findings.[1] Evidential support for each differential diagnosis is presented, along with recommended follow-up that may be conducted by the clinician to arrive at a more definitive diagnosis. The system also serves as a clinician reference with a searchable database of diseases and clinical manifestations.
History
Designed by the Laboratory of Computer Science at the Massachusetts General Hospital, work on DXplain began in 1984 with a first version being released in 1986.[2]
Educational tool
Use of DXplain as a tool for medical consultation has been common to some institutions since it fills a gap, particularly for medical students in clinical rotations, that is not adequately covered by textbook literature.[3] The system's large knowledge base combined with its ability to formulate diagnostic hypotheses have made it a popular education tool for US-based medical schools; by 2005, DXplain was supporting more than 33,189 total users.[4]
Methodology
DXplain generates ranked differential diagnoses using a pseudo-probabilistic algorithm.[5] Each clinical finding entered into DXplain is assessed by determining the importance of the finding and how strongly the finding supports a given diagnosis for each disease in the knowledge base. Using this criterion, DXplain generates ranked differential diagnoses with the most likely diseases yielding the lowest rank. Using stored information regarding each disease’s prevalence and significance, the system differentiates between common and rare diseases.
Accuracy
Analysis of accuracy has shown promise in DXplain and similar clinical decision support systems. In a preliminary trial investigation of 46 benchmark cases with a variety of diseases and clinical manifestations, the ranked differential diagnoses generated by DXplain were shown to be in alignment with a panel of five board-certified physicians.[6] In another study investigating how well decision support systems work at responding to a bioterrorism event, an evaluation of 103 consecutive internal medicine cases showed that Dxplain correctly identified the diagnosis in 73% of cases, with the correct diagnosis averaging a rank of 10.7.[7]
Clinical usage
Despite its usage in clinician training, similar to other clinical decision support systems, DXplain has not expanded beyond the research laboratory or medical training setting, due in part to a lack of support by clinicians in real-world settings.[8]
See also
References
- ↑ Barnett GO, Cimino JJ, Hupp JA, Hoffer EP. DXplain. An evolving diagnostic decision-support system. JAMA. 1987 Jul 3;258(1):67-74.
- ↑ "MGH Laboratory of Computer Science – projects – dxplain," Laboratory of Computer Science, Massachusetts General Hospital. 2007". Archived from the original on 2007-03-04. Retrieved 2007-03-13.
- ↑ London S. DXplain: a Web-based diagnostic decision support system for medical students. Med Ref Serv Q. 1998 Summer;17(2):17-28.
- ↑ Computer Science and Artificial Intelligence Laboratory (CSAIL), MIT. 2005.
- ↑ Detmer WM, Shortliffe EH. Using the Internet to Improve Knowledge Diffusion in Medicine. Communications of the Association for Computing Machinery. 1997; 40(8):101-108. 1997.
- ↑ Feldman MJ, Barnett GO. An approach to evaluating the accuracy of DXplain. Comput Methods Programs Biomed. 1991 Aug;35(4):261-6.
- ↑ Bravata DM, Sundaram V, McDonald KM, Smith WM, Szeto H, Schleinitz MD, et al. Detection and diagnostic decision support systems for bioterrorism response. Emerg Infect Dis. 2004 Jan.
- ↑ Coiera E. Guide to Health Informatics: 2nd Edition. Arnold, 2003; 332-343.