Cancer Medicine (May 2020)

Development and validation of a novel nomogram for pretreatment prediction of liver metastasis in pancreatic cancer

  • Shangxiang Chen,
  • Shaojie Chen,
  • Guoda Lian,
  • Yaqing Li,
  • Xijiu Ye,
  • Jinmao Zou,
  • Ruomeng Li,
  • Ying Tan,
  • Xuanna Li,
  • Mengfei Zhang,
  • Chunyu Huang,
  • Chengzhi Huang,
  • Qiubo Zhang,
  • Kaihong Huang,
  • Yinting Chen

DOI
https://doi.org/10.1002/cam4.2930
Journal volume & issue
Vol. 9, no. 9
pp. 2971 – 2980

Abstract

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Abstract Purpose The diagnostic value of nomogram in pancreatic cancer (PC) with liver metastasis (PCLM) is still largely unknown. We sought to develop and validate a novel nomogram for the prediction of liver metastasis in patients with PC. Method About 604 pathologically confirmed PC patients from the Sun Yat‐sen University Cancer Center (SYSUCC) between July, 2001 and December, 2013 were retrospectively studied. The SYSUCC cohort was randomly assigned to as the training set and internal validation set. Using these two sets, we derived and validated a prognostic model by using concordance index and calibration curves. Another two independent cohorts between August, 2002 and December, 2013 from the Sun Yat‐sen Memorial Hospital (SYSMH, n = 335) and Guangdong General Hospital (GDGH, n = 503) was used for external validation. Result Computed tomography (CT) reported liver metastasis status, carcinoembryonic antigen (CEA) level and differentiation type were identified as risk factors for PCLM in the training set. The final diagnostic model demonstrated good calibration and discrimination with a concordance index of 0.97 and had a robust internal validation. The score ability to diagnose PCLM was further externally validated in SYSMH and GDGH with a concordance index of 0.93. The model showed better calibration and discrimination than CT, CEA and differentiation in each cohort. Conclusion Based on a large multi‐institution database and on the routinely observed CT‐reported status, CEA level and tumor differentiation in clinical practice, we developed and validated a novel nomogram to predict PLCM.

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