This is a resource book onclinical decision supportsystems for informatics specialists, a textbook for teachers or students in health informaticsand a comprehensive introduction for clinicians. It has become obvious that, in addition to physicians, other health professionals have need of decision support. Therefore, the issues raised in this book apply to a broad range of clinicians. The book includes chapters written by internationally recognized experts on the design, evaluation and application of these systems, who examine the impact of computer-based diagnostic tools both from the practitioners perspective and that of the patient.
Cited By
- Liu M, Zhang J and Lin X Design and Implementation of Medical Process Visualization CDSS Oriented to NCCN Guidelines Proceedings of the 2020 International Conference on Internet Computing for Science and Engineering, (30-34)
- Porebski S and Straszecka E (2018). Extracting easily interpreted diagnostic rules, Information Sciences: an International Journal, 426:C, (19-37), Online publication date: 1-Feb-2018.
- Jain V and Agarwal P Symptomatic Diagnosis and Prognosis of Psychiatric Disorders through Personal Gadgets Proceedings of the 2017 CHI Conference Extended Abstracts on Human Factors in Computing Systems, (118-123)
- Khan A, Doucette J and Cohen R (2013). Validation of an ontological medical decision support system for patient treatment using a repository of patient data, ACM Transactions on Intelligent Systems and Technology, 4:4, (1-31), Online publication date: 1-Sep-2013.
- Chen L, Li X and Han J MedRank Proceedings of the Twenty-Fourth Australasian Database Conference - Volume 137, (3-12)
- Damas S, Cordón O, Ibáñez O, Santamaría J, Alemán I, Botella M and Navarro F (2011). Forensic identification by computer-aided craniofacial superimposition, ACM Computing Surveys, 43:4, (1-27), Online publication date: 1-Oct-2011.
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