Skip to main page content
U.S. flag

An official website of the United States government

Dot gov

The .gov means it’s official.
Federal government websites often end in .gov or .mil. Before sharing sensitive information, make sure you’re on a federal government site.

Https

The site is secure.
The https:// ensures that you are connecting to the official website and that any information you provide is encrypted and transmitted securely.

Access keys NCBI Homepage MyNCBI Homepage Main Content Main Navigation
. 2021 Jun 4;57(6):2003036.
doi: 10.1183/13993003.03036-2020. Print 2021 Jun.

Machine learning can predict disease manifestations and outcomes in lymphangioleiomyomatosis

Affiliations
Free article

Machine learning can predict disease manifestations and outcomes in lymphangioleiomyomatosis

Saisakul Chernbumroong et al. Eur Respir J. .
Free article

Abstract

Background: Lymphangioleiomyomatosis (LAM) is a rare multisystem disease with variable clinical manifestations and differing rates of progression that make management decisions and giving prognostic advice difficult. We used machine learning to identify clusters of associated features which could be used to stratify patients and predict outcomes in individuals.

Patients and methods: Using unsupervised machine learning we generated patient clusters using data from 173 women with LAM from the UK and 186 replication subjects from the US National Heart, Lung, and Blood Institute (NHLBI) LAM registry. Prospective outcomes were associated with cluster results.

Results: Two- and three-cluster models were developed. A three-cluster model separated a large group of subjects presenting with dyspnoea or pneumothorax from a second cluster with a high prevalence of angiomyolipoma symptoms (p=0.0001) and tuberous sclerosis complex (TSC) (p=0.041). Patients in the third cluster were older, never presented with dyspnoea or pneumothorax (p=0.0001) and had better lung function. Similar clusters were reproduced in the NHLBI cohort. Assigning patients to clusters predicted prospective outcomes: in a two-cluster model the future risk of pneumothorax was 3.3 (95% CI 1.7-5.6)-fold greater in cluster 1 than cluster 2 (p=0.0002). Using the three-cluster model, the need for intervention for angiomyolipoma was lower in clusters 2 and 3 than cluster 1 (p<0.00001). In the NHLBI cohort, the incidence of death or lung transplant was much lower in clusters 2 and 3 (p=0.0045).

Conclusions: Machine learning has identified clinically relevant clusters associated with complications and outcome. Assigning individuals to clusters could improve decision making and prognostic information for patients.

PubMed Disclaimer

Conflict of interest statement

Conflict of interest: S. Chernbumroong has nothing to disclose. Conflict of interest: J. Johnson has nothing to disclose. Conflict of interest: N. Gupta has nothing to disclose. Conflict of interest: S. Miller reports grants from British Lung Foundation, outside the submitted work. Conflict of interest: F.X. McCormack has nothing to disclose. Conflict of interest: J.M. Garibaldi has nothing to disclose. Conflict of interest: S.R. Johnson reports grants from the National Institute for Health Research, The LAM Foundation and LAM Action, during the conduct of the study; personal fees for advisory board work from Pfizer, outside the submitted work.

Publication types

LinkOut - more resources