Using probabilistic and decision–theoretic methods in treatment and prognosis modeling

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Causal probabilistic networks, also called Bayesian networks, allow both qualitative knowledge about the structure of a problem and quantitative knowledge, derived from case databases, expert opinion and literature to be exploited in the construction of decision support systems for diagnosis, treatment and prognosis. This mixing of qualitative and quantitative knowledge will be illustrated, using the selection of antibiotics for a subset of patients with severe infections. The subset consists of patients where bacteria or fungi have been found in the blood. A simple pathophysiological model of infection is used to calculate a prognosis, dependent on the choice of antibiotics. A decision–theoretic approach is used to balance the therapeutic benefit of antibiotic treatment against the cost of antibiotics in the form of direct monetary cost, side effects and ecological cost. A retrospective trial on patients with bacteria or fungi in the blood stemming from the urinary tract indicates that with this approach, it may be possible to suggest balanced choices of antibiotics that not only achieve greater therapeutic benefit, but also reduce the cost of therapy.

论文关键词:Decision theory,Decision support system,Causal probabilistic network,Bacteraemia,Prognosis,Antibiotic therapy

论文评审过程:Received 15 December 1997, Revised 8 June 1998, Accepted 20 July 1998, Available online 2 May 2000.

论文官网地址:https://doi.org/10.1016/S0933-3657(98)00048-7