首页> 外文期刊>Clinical Biochemistry >Advantages of prostate-specific antigen (PSA) clearance model over simple PSA half-life computation to describe PSA decrease after prostate adenomectomy.
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Advantages of prostate-specific antigen (PSA) clearance model over simple PSA half-life computation to describe PSA decrease after prostate adenomectomy.

机译:前列腺特异性抗原(PSA)清除模型优于简单的PSA半衰期计算来描述前列腺腺切除术后PSA降低的优势。

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OBJECTIVES: A population kinetic approach based on PSA clearance (CL(PSA)) may be a more rational strategy to characterize prostate-specific antigen (PSA) decrease profile after prostate surgery than the commonly used method (half-life from mono/bi-exponential models). METHODS: We used 182 post-adenomectomy PSA concentrations from 56 benign prostatic hyperplasia patients to build, with NONMEM software, a multi-exponential and a CL(PSA) model for comparison. RESULTS: The best multi-exponential model was PSA(t)=4.96e(-)(0.269t)+3.10e(-)(0.16t)+0.746e(+)(0.0002t) with a stable median residual PSA at 0.64 ng/mL. The best model parametrized with clearance was CL(PSA)=0.0229()(AGE/69)(3.78). Akaike information criteria and standard errors favored the CL(PSA) model. Median peripheral zone and transitional zone productions were 0.034 ng/mL/cm(3) and 0.136 ng/mL/g. A threshold at 2 ng/mL on day 90 allowed for a diagnostic of biochemical relapse diagnostic. CONCLUSIONS: The population CL(PSA) model was superior to the multi-exponential approach for investigating individual post-adenomectomy PSA decreases.
机译:目标:基于PSA清除率的群体动力学方法(CL(PSA))可能是比常规方法(单/双-半衰期半衰期)更能合理地表征前列腺特异性抗原(PSA)降低特征的方法。指数模型)。方法:我们使用56名前列腺增生患者的182例子宫切除术后PSA浓度,通过NONMEM软件建立了多指数模型和CL(PSA)模型进行比较。结果:最佳的多指数模型是PSA(t)= 4.96e(-)(0.269t)+ 3.10e(-)(0.16t)+ 0.746e(+)(0.0002t),且PSA中位数是稳定的0.64 ng / mL。带有间隙的最佳参数化模型是CL(PSA)= 0.0229()(AGE / 69)(3.78)。 Akaike信息标准和标准错误偏爱CL(PSA)模型。中位数外围区和过渡区的产量为0.034 ng / mL / cm(3)和0.136 ng / mL / g。第90天的阈值为2 ng / mL,可用于生化复发诊断的诊断。结论:人口CL(PSA)模型优于多指数方法来调查个体子宫切除术后PSA减少。

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