Decision support system to assist mechanical ventilation in the adult respiratory distress syndrome.

D A Bottino, A Giannella-Neto, C M David, M F Melo
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引用次数: 3

Abstract

This paper presents a knowledge-based decision support system to assist mechanical ventilation in patients with the Adult Respiratory Distress Syndrome (DSSARDS). The knowledge base uses clinical algorithms developed from interviews and seminars with experts. The system contains 140 rules, applies backward chaining and was built on an IBM-PC compatible microcomputer. Clinical and physiological data and ventilator settings were used for suggestions of ventilatory support mode (VSMODE) and settings (MVSET) and for hemodynamic evaluation and therapy (HEMO). Success rates (s) and kappa coefficient (k) were used to measure agreement between DSSARDS and physicians at 4 decision steps related to: beginning of mechanical ventilation (FIRSTSET), VSMODE, MVSET and HEMO, DSSARDS prototype was evaluated in a development phase with 6 patients aged 48.6 +/- 15.9 years. Agreement results for 142 decision steps were: FIRSTSET k = 0.90, s = 0.93; VSMODE k = 0.76, s = 0.92; HEMO k = 0.58, s = 0.70, MVSET k = 0.86, s = 0.92 (p < 0.05 for all k). Improvements in the knowledge base were performed mainly in HEMO and VSMODE modules. The subsequent test phase studied 5 patients aged 54.8 +/- 11.0 years in a total of 900 decision steps. Results were: FIRSTSET k = 0.93, s = 0.95; VSMODE k = 0.93, s = 0.96; HEMO k = 0.97, s = 0.99, MVSET k = 0.96, s = 0.97 (p < 0.05 for all k). The results indicate significant agreement between DSSARDS and physicians for all decision steps. This suggests that DSSARDS may be used as a support for decision making and a training tool for mechanical ventilation in patients with the adult respiratory distress syndrome.

辅助机械通气治疗成人呼吸窘迫综合征的决策支持系统。
本文提出了一种基于知识的决策支持系统,用于辅助成人呼吸窘迫综合征(DSSARDS)患者的机械通气。知识库使用临床算法,这些算法是通过与专家的访谈和研讨会开发的。该系统包含140条规则,采用反向链,建立在IBM-PC兼容的微型计算机上。临床和生理数据以及呼吸机设置用于建议通气支持模式(VSMODE)和设置(MVSET)以及血流动力学评估和治疗(HEMO)。成功率(s)和kappa系数(k)用于衡量DSSARDS和医生在4个决策步骤上的一致性:机械通气开始(FIRSTSET)、VSMODE、MVSET和HEMO,在开发阶段对6例年龄为48.6 +/- 15.9岁的DSSARDS原型进行评估。142个决策步骤的一致性结果为:FIRSTSET k = 0.90, s = 0.93;VSMODE k = 0.76, s = 0.92;HEMO k = 0.58, s = 0.70, MVSET k = 0.86, s = 0.92(所有k均p < 0.05),知识库的改进主要在HEMO和VSMODE模块进行。随后的试验阶段研究了5名年龄为54.8 +/- 11.0岁的患者,共900个决策步骤。结果:FIRSTSET k = 0.93, s = 0.95;VSMODE k = 0.93, s = 0.96;HEMO k = 0.97, s = 0.99, MVSET k = 0.96, s = 0.97(所有k均p < 0.05)。结果表明,DSSARDS和医生在所有决策步骤上都有显著的一致性。这表明,DSSARDS可作为成人呼吸窘迫综合征患者机械通气的决策支持和培训工具。
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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