Thrombosis risk prediction in lymphoma patients: A multi‐institutional, retrospective model development and validation study

Author:

Ma Shengling1ORCID,La Jennifer23,Swinnerton Kaitlin N.2,Guffey Danielle4,Bandyo Raka5,De Las Pozas Giordana6,Hanzelka Katy7,Xiao Xiangjun4,Rojas‐Hernandez Cristhiam M.8ORCID,Amos Christopher I.49,Chitalia Vipul21011,Ravid Katya10,Merriman Kelly W.6,Flowers Christopher R.12,Fillmore Nathanael23,Li Ang1ORCID

Affiliation:

1. Section of Hematology‐Oncology Baylor College of Medicine Houston Texas USA

2. Massachusetts Veterans Epidemiology Research and Information Center VA Boston Healthcare System Boston Massachusetts USA

3. Department of Medicine Harvard Medical School Boston Massachusetts USA

4. Institute for Clinical & Translational Research Baylor College of Medicine Houston Texas USA

5. Harris Health System Houston Texas USA

6. Department of Cancer Registry The University of Texas MD Anderson Cancer Center Houston Texas USA

7. Division of Pharmacy The University of Texas MD Anderson Cancer Center Houston Texas USA

8. Section of Benign Hematology The University of Texas MD Anderson Cancer Center Houston Texas USA

9. Section of Epidemiology and Population Science Baylor College of Medicine Houston Texas USA

10. Department of Medicine and Whitaker Cardiovascular Institute Boston University Chobanian and Advedisian School of Medicine Boston Massachusetts USA

11. Institute of Medical Engineering and Sciences Massachusetts Institute of Technology Cambridge Massachusetts USA

12. Department of Lymphoma‐Myeloma, Division of Cancer Medicine The University of Texas MD Anderson Cancer Center Houston Texas USA

Abstract

AbstractVenous thromboembolism (VTE) poses a significant risk to cancer patients receiving systemic therapy. The generalizability of pan‐cancer models to lymphomas is limited. Currently, there are no reliable risk prediction models for thrombosis in patients with lymphoma. Our objective was to create a risk assessment model (RAM) specifically for lymphomas. We performed a retrospective cohort study to develop Fine and Gray sub‐distribution hazard model for VTE and pulmonary embolism (PE)/ lower extremity deep vein thrombosis (LE‐DVT) respectively in adult lymphoma patients from the Veterans Affairs national healthcare system (VA). External validations were performed at the Harris Health System (HHS) and the MD Anderson Cancer Center (MDACC). Time‐dependent c‐statistic and calibration curves were used to assess discrimination and fit. There were 10,313 (VA), 854 (HHS), and 1858 (MDACC) patients in the derivation and validation cohorts with diverse baseline. At 6 months, the VTE incidence was 5.8% (VA), 8.2% (HHS), and 8.8% (MDACC), respectively. The corresponding estimates for PE/LE‐DVT were 3.9% (VA), 4.5% (HHS), and 3.7% (MDACC), respectively. The variables in the final RAM included lymphoma histology, body mass index, therapy type, recent hospitalization, history of VTE, history of paralysis/immobilization, and time to treatment initiation. The RAM had c‐statistics of 0.68 in the derivation and 0.69 and 0.72 in the two external validation cohorts. The two models achieved a clear differentiation in risk stratification in each cohort. Our findings suggest that easy‐to‐implement, clinical‐based model could be used to predict personalized VTE risk for lymphoma patients.

Funder

Artificial Intelligence/Machine Learning Consortium to Advance Health Equity and Researcher Diversity

American Heart Association

National Heart, Lung, and Blood Institute

Cancer Prevention and Research Institute of Texas

Publisher

Wiley

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