Wang Mengjun, Devarajan Karthik, Singal Amit G, Marrero Jorge A, Dai Jianliang, Feng Ziding, Rinaudo Jo Ann S, Srivastava Sudhir, Evans Alison, Hann Hie-Won, Lai Yinzhi, Yang Hushan, Block Timothy M, Mehta Anand
Drexel University College of Medicine, Philadelphia, Pennsylvania. 19102.
Fox Chase Cancer Center, Philadelphia, Pennsylvania.
Cancer Prev Res (Phila). 2016 Feb;9(2):172-9. doi: 10.1158/1940-6207.CAPR-15-0186. Epub 2015 Dec 28.
Biomarkers for the early diagnosis of hepatocellular carcinoma (HCC) are needed to decrease mortality from this cancer. However, as new biomarkers have been slow to be brought to clinical practice, we have developed a diagnostic algorithm that utilizes commonly used clinical measurements in those at risk of developing HCC. Briefly, as α-fetoprotein (AFP) is routinely used, an algorithm that incorporated AFP values along with four other clinical factors was developed. Discovery analysis was performed on electronic data from patients who had liver disease (cirrhosis) alone or HCC in the background of cirrhosis. The discovery set consisted of 360 patients from two independent locations. A logistic regression algorithm was developed that incorporated log-transformed AFP values with age, gender, alkaline phosphatase, and alanine aminotransferase levels. We define this as the Doylestown algorithm. In the discovery set, the Doylestown algorithm improved the overall performance of AFP by 10%. In subsequent external validation in over 2,700 patients from three independent sites, the Doylestown algorithm improved detection of HCC as compared with AFP alone by 4% to 20%. In addition, at a fixed specificity of 95%, the Doylestown algorithm improved the detection of HCC as compared with AFP alone by 2% to 20%. In conclusion, the Doylestown algorithm consolidates clinical laboratory values, with age and gender, which are each individually associated with HCC risk, into a single value that can be used for HCC risk assessment. As such, it should be applicable and useful to the medical community that manages those at risk for developing HCC.
为降低肝细胞癌(HCC)的死亡率,需要用于早期诊断肝细胞癌的生物标志物。然而,由于新的生物标志物迟迟未能应用于临床实践,我们开发了一种诊断算法,该算法利用了HCC高危人群常用的临床测量指标。简而言之,由于甲胎蛋白(AFP)是常规使用的指标,因此开发了一种将AFP值与其他四个临床因素相结合的算法。对仅患有肝病(肝硬化)或肝硬化背景下患有HCC的患者的电子数据进行了发现分析。发现集包括来自两个独立地点的360名患者。开发了一种逻辑回归算法,该算法将对数转换后的AFP值与年龄、性别、碱性磷酸酶和丙氨酸转氨酶水平相结合。我们将此定义为多伊尔斯顿算法。在发现集中,多伊尔斯顿算法将AFP的整体性能提高了10%。在随后对来自三个独立地点的2700多名患者进行的外部验证中,与单独使用AFP相比,多伊尔斯顿算法将HCC的检测率提高了4%至20%。此外,在固定特异性为95%的情况下,与单独使用AFP相比,多伊尔斯顿算法将HCC的检测率提高了2%至20%。总之,多伊尔斯顿算法将临床实验室值与年龄和性别(它们各自与HCC风险单独相关)整合为一个可用于HCC风险评估的单一值。因此,它应该对管理HCC高危人群的医学界适用且有用。