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Poster session 05

1601P - Predictors of in-hospital mortality after unplanned admissions among adults with cancer aged 80 years and older

Date

10 Sep 2022

Session

Poster session 05

Topics

Supportive Care and Symptom Management;  Cancer in Older Adults

Tumour Site

Presenters

Felippe Lazar Neto

Citation

Annals of Oncology (2022) 33 (suppl_7): S713-S742. 10.1016/annonc/annonc1075

Authors

F. Lazar Neto1, C.M.T. Hidalgo Filho1, J.W.D. Rocha1, V.P. Sobottka2, L.T.B. Stangler2, G. Benfatti2, H. Guedes2, M.Z. Claro2, R.C. Bonadio3, M.D.P.E. Diz4, P.M. Hoff1

Author affiliations

  • 1 Oncology Institute, ICESP - Instituto do Cancer do Estado de Sao Paulo, 01246-000 - Sao Paulo/BR
  • 2 Oncology, ICESP - Instituto do Cancer do Estado de Sao Paulo, 01246-000 - Sao Paulo/BR
  • 3 Medical Oncology, ICESP - Instituto do Cancer do Estado de Sao Paulo, 01246-000 - Sao Paulo/BR
  • 4 Radiology And Oncology Department, ICESP - Instituto do Cancer do Estado de Sao Paulo, 01246-000 - Sao Paulo/BR

Resources

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Abstract 1601P

Background

Patients older than 80 years with cancer are more likely to be late-diagnosed, and less likely to receive optimal cancer treatment, compared to younger geriatric patients. Understanding the factors that influence these patient's outcomes is essential to guide their management and proper choice of assistance.

Methods

A retrospective cohort of patients with solid tumors older than 80 years admitted to a tertiary, publicly-funded, cancer center in Brazil, from February 1st to December 31st, 2021. COVID-19 diagnoses were excluded. We collected data on staging, body mass index (BMI), comorbidities, ECOG-PS, symptoms, admission diagnoses, and in-hospital mortality. The age-adjusted Charlson Comorbidity Index [CCI] was further calculated. We investigated the association between collected variables of interest and in-hospital mortality with uni and multivariable logistic regression models.

Results

Of 440 patients, the median age was 84 (IQR 81-87) and 58% were men. Prevalent cancer diagnoses were prostate (22%), breast (12%), colon (9.5%), and lung cancer (8.1%). Before admission, 42% of patients had distant metastasis, while 21% had no evidence of disease. Two-thirds of patients had poorer ECOG-PS (≥2), and the median CCI was 10 (IQR 8-11). Comorbidities included cardiovascular disease (29%), chronic renal disease (13%), dementia (9.5%) and COPD (9.1%). Pain (27%), dyspnea (18%), and altered level of consciousness (16%) were the most prevalent complaints. During hospitalization, 35% had an infection diagnosis and 26% had progression of disease. The overall in-hospital mortality rate was 25%. Higher CCI (OR 1.24, 95%CI 1.11-1.38), poorer ECOG-PS (OR 2.17, 95%CI 1.29-3.77), and progression of disease (OR 2.77, 95%CI 1.62-4.75) were associated with in-hospital mortality after univariable regression and remained all statistically significant in the multivariable model. BMI and age were not associated with poorer outcomes.

Conclusions

Hospitalized patients with cancer aged 80 years and older have a high mortality rate. The Charlson Comorbidity Index, a comorbidity burden score that includes cancer staging, correlates with in-hospital mortality and therefore could guide supportive care decisions for older adults.

Clinical trial identification

Editorial acknowledgement

Legal entity responsible for the study

The authors.

Funding

Has not received any funding.

Disclosure

R.C. Bonadio: Financial Interests, Personal, Expert Testimony: AstraZeneca, Ache; Financial Interests, Personal, Research Grant: Novartis; Financial Interests, Personal, Sponsor/Funding: Roche. All other authors have declared no conflicts of interest.

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