A prediction model to determine the untapped lung donor pool outside of the DonateLife network in Victoria

Author:

Okahara Shuji12ORCID,Snell Gregory I2ORCID,Levvey Bronwyn J2,McDonald Mark3,D’Costa Rohit4,Opdam Helen3,Pilcher David V156ORCID

Affiliation:

1. Australian and New Zealand Intensive Care Research Centre, Monash University, Melbourne, Australia

2. Lung Transplant Service, The Alfred Hospital and Monash University, Melbourne, Australia

3. Organ and Tissue Authority, Canberra, Australia

4. DonateLife Victoria, Carlton, Australia

5. Department of Intensive Care, The Alfred Hospital, Melbourne, Australia

6. The Australian and New Zealand Intensive Care Society (ANZICS), Centre for Outcome and Resources Evaluation, Melbourne, Australia

Abstract

Lung transplantation is limited by a lack of suitable lung donors. In Australia, the national donation organisation (DonateLife) has taken a major role in optimising organ donor identification. However, the potential outside the DonateLife network hospitals remains uncertain. We aimed to create a prediction model for lung donation within the DonateLife network and estimate the untapped lung donors outside of the DonateLife network. We reviewed all deaths in the state of Victoria’s intensive care units using a prospectively collected population-based intensive care unit database linked to organ donation records. A logistic regression model derived using patient-level data was developed to characterise the lung donors within DonateLife network hospitals. Consequently, we estimated the expected number of lung donors in Victorian hospitals outside the DonateLife network and compared the actual number. Between 2014 and 2018, 291 lung donations occurred from 8043 intensive care unit deaths in DonateLife hospitals, while only three lung donations occurred from 1373 ICU deaths in non-DonateLife hospitals. Age, sex, postoperative admission, sepsis, neurological disease, trauma, chronic respiratory disease, lung oxygenation and serum creatinine were factors independently associated with lung donation. A highly discriminatory prediction model with area under the receiver operator characteristic curve of 0.91 was developed and accurately estimated the number of lung donors. Applying the model to non-DonateLife hospital data predicted only an additional five lung donors. This prediction model revealed few additional lung donor opportunities outside the DonateLife network, and the necessity of alternative and novel strategies for lung donation. A donor prediction model could provide a useful benchmarking tool to explore organ donation potential across different jurisdictions, hospitals and transplanting centres.

Publisher

SAGE Publications

Subject

Anesthesiology and Pain Medicine,Critical Care and Intensive Care Medicine

Reference19 articles.

1. Lung transplantation in Australia, 1986–2018: more than 30 years in the making

2. Continued Successful Evolution of Extended Criteria Donor Lungs for Transplantation

3. Donor risk prediction

4. Estimating the Number of Organ Donors in Australian Hospitals—Implications for Monitoring Organ Donation Practices

5. Australian Government Organ and Tissue Authority. Australian Donation and Transplantation Activity Report 2019. https://www.donatelife.gov.au/sites/default/files/ota_2019activityreport_2020017.pdf (accessed September 2020).

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