New computer-based tools for empiric antibiotic decision support.

H Warner, S R Blue, D Sorenson, L Reimer, L Li, M Nelson, M Barton, H Warner
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Abstract

Since 1995 we have been developing a decision-support model, called Q-ID, which uses a series of infectious disease knowledge bases to make recommendations for empirical treatment or to check the appropriateness of current antibiotic therapy. From disease manifestations and risk factors, a differential diagnosis for the patient is generated by a diagnostic medical expert system. The resulting probability of each: disease is multiplied by the expected benefit in improved mortality and morbidity from optimal antibiotic treatment of each disease. To generate empirical treatment recommendations, site-specific data on sensitivity to antibiotics of each organism is used as an estimate of the likelihood of achieving maximum benefit for each disease on the patient's differential. Combining this data with drug and patient specific factors, the model recommends the antibiotic(s) most likely to produce the optimal benefit in this patient with the least risk and expense. In this paper the model is described, excerpts from each of the knowledge bases are presented, and performance of the model in a real case is shown for illustration.

新的基于计算机的经验性抗生素决策支持工具。
自1995年以来,我们一直在开发一个决策支持模型,称为Q-ID,它使用一系列传染病知识库为经验治疗提出建议或检查当前抗生素治疗的适当性。诊断医学专家系统根据疾病表现和危险因素对患者进行鉴别诊断。每种疾病的发生概率乘以每种疾病的最佳抗生素治疗在改善死亡率和发病率方面的预期收益。为了产生经经验治疗建议,使用每种生物对抗生素敏感性的特定地点数据作为对每种疾病在患者差异上实现最大效益的可能性的估计。将这些数据与药物和患者特定因素相结合,该模型推荐的抗生素最有可能在该患者中产生最佳效益,风险和费用最小。本文对该模型进行了描述,给出了每个知识库的摘要,并通过实际案例展示了该模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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