Augmented intelligence to predict 30-day mortality in patients with cancer.

Journal: Future oncology (London, England)
Published Date:

Abstract

An augmented intelligence tool to predict short-term mortality risk among patients with cancer could help identify those in need of actionable interventions or palliative care services. An algorithm to predict 30-day mortality risk was developed using socioeconomic and clinical data from patients in a large community hematology/oncology practice. Patients were scored weekly; algorithm performance was assessed using dates of death in patients' electronic health records. For patients scored as highest risk for 30-day mortality, the event rate was 4.9% (vs 0.7% in patients scored as low risk; a 7.4-times greater risk). The development and validation of a decision tool to accurately identify patients with cancer who are at risk for short-term mortality is feasible.

Authors

  • Ajeet Gajra
    Cardinal Health Specialty Solutions, Dublin, OH 43017, USA.
  • Marjorie E Zettler
    Cardinal Health Specialty Solutions, Dublin, OH 43017, USA.
  • Kelly A Miller
    Jvion, Inc., Suwanee, GA 30024, USA.
  • Sibel Blau
    Rainier Hematology Oncology/Northwest Medical Specialties, Tacoma, WA 98405, USA.
  • Swetha S Venkateshwaran
    Jvion, Inc., Suwanee, GA 30024, USA.
  • Shreenath Sridharan
    Jvion, Inc., Suwanee, GA 30024, USA.
  • John Showalter
    Linus Health, Boston, MA, United States.
  • Amy W Valley
    Cardinal Health Specialty Solutions, Dublin, OH 43017, USA.
  • John G Frownfelter
    Jvion, Inc., Suwanee, GA 30024, USA.