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多种影像学检查结合ELISPOT在脊柱结核早期诊断中的价值

Journal of Clinical Medical Literature (ElectronicEdition)(2017)

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Abstract
目的 探讨酶联免疫斑点实验联合传统影像学诊断应用于脊柱结核早期诊断的临床价值.方法 选取我院2015.03—2016.12收治疑似脊柱结核患者68例,经最终确诊后随机分为2组,分别采用传统方式和联合诊断,结果与金标准对比.结果 使用ELISPOT联合传统诊断技术与金标准相比,总相符率为96.87%,高于单独传统诊断组,而且差异显著(P=0.013).结论 ELISPOT结合传统诊断方式能提高检出率.
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