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血液学数据的预测价值与效率

Predictive value and efficiency of hematology data.

作者信息

Galen R S

出版信息

Blood Cells. 1980;6(2):185-97.

PMID:6769520
Abstract

Laboratory test results and procedures can be evaluated at four levels:1. Analytic analysis of laboratory test: precision, technical sensitivity, technical specificity; 2. Diagnostic analysis of laboratory test: diagnostic sensitivity, diagnostic specificity, Youden index, likelihood ratio, etc.; 3. Operational analysis of laboratory test: predictive value of positive result, predictive value of negative result, efficiency, discriminant function, etc.; 4. Medical decision-making analysis of laboratory test: threshold probability, cost-benefit analysis, solving the decision tree. Analysis of results or selection of tests can occur at any level, without knowledge of the test's evaluation or performance at the remaining levels. Alternatively, the development of new laboratory tests can proceed from level 1 to level 4, or vice versa. Unfortunately, the former is usually the case and most of the tests in use today have never been evaluated at the medical decision-making level (level 4). Recent efforts at developing automated WBC differential counters represent a disproportionate amount of time and energy expended at level 1, and typify our backward approach to laboratory medicine. In thinking about the development of new diagnostic tests, we should begin at level 4 to characterize the properties and specifications that the test must meet. As an example, an in vitro test for the diagnosis of pulmonary embolism could be characterized in this fashion with criteria specified at each of the lower levels. Returning to the question of "How good should a laboratory test be?", we can see that the answer must come from an analysis of the benefit-cost equation (level 4). Figure 2 is a plot of the net benefit and cost of treatment versus the threshold probability. Since the threshold probability defines how certain one must be of the diagnosis before proceeding with treatment, it serves as a minimum probability which should be exceeded by the predictive value of the test. When the benefit--cost ratio is low, a test with a very high predictive value is required to exceed the threshold probability. On the other hand, when the benefit--cost ratio is high, even a test with a low predictive value would be of use to the physician in making the decision to treat the patient. Within this framework, a number of clinical situations could be evaluated and problems requiring the development of highly predictive laboratory tests (low benefit--cost ratios) could be identified. Too much emphasis in laboratory medicine has been placed on the "laboratory" and not enough on the "medicine". How important is the coefficient of variation when the benefit--cost ratio is high? Tests can not be developed or selected appropriately in a therapeutic vacuum.

摘要

实验室检测结果及程序可从四个层面进行评估

  1. 实验室检测的分析性分析:精密度、技术灵敏度、技术特异性;2. 实验室检测的诊断性分析:诊断灵敏度、诊断特异性、约登指数、似然比等;3. 实验室检测的操作性分析:阳性结果预测值、阴性结果预测值、效率、判别函数等;4. 实验室检测的医学决策分析:阈值概率、成本效益分析、求解决策树。结果分析或检测选择可在任何一个层面进行,而无需了解该检测在其他层面的评估或性能情况。或者,新实验室检测的开发可以从第1层推进到第4层,反之亦然。遗憾的是,通常情况是前者,如今使用的大多数检测从未在医学决策层面(第4层)进行过评估。近期开发自动白细胞分类计数器的努力在第1层花费了不成比例的时间和精力,典型地体现了我们在检验医学上的落后方法。在思考新诊断检测的开发时,我们应从第4层开始,以确定检测必须满足的特性和规格。例如,一种用于诊断肺栓塞的体外检测可以按照这种方式,用较低各层规定的标准来进行描述。回到“实验室检测应该多好?”这个问题,我们可以看到答案必须来自对效益成本等式(第4层)的分析。图2是治疗的净效益和成本与阈值概率的关系图。由于阈值概率定义了在进行治疗之前对诊断必须有多确定,它作为一个最小概率,检测的预测值应超过该概率。当效益成本比很低时,需要一个预测值非常高的检测才能超过阈值概率。另一方面,当效益成本比很高时,即使一个预测值低的检测对医生做出治疗患者的决策也会有用。在这个框架内,可以评估一些临床情况,并识别出需要开发高预测性实验室检测(低效益成本比)的问题。检验医学过于强调“实验室”,而对“医学”的重视不足。当效益成本比很高时,变异系数有多重要呢?检测不能在治疗真空状态下进行适当的开发或选择。

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