Machine learning defined diagnostic criteria for differentiating pituitary metastasis from autoimmune hypophysitis in patients undergoing immune checkpoint blockade therapy

Eur J Cancer. 2019 Sep:119:44-56. doi: 10.1016/j.ejca.2019.06.020. Epub 2019 Aug 12.

Abstract

Purpose: New-onset pituitary gland lesions are observed in up to 18% of cancer patients undergoing treatment with immune checkpoint blockers (ICB). We aimed to develop and validate an imaging-based decision-making algorithm for use by the clinician that helps differentiate pituitary metastasis (PM) from ICB-induced autoimmune hypophysitis (HP).

Materials and methods: A systematic search was performed in the MEDLINE and EMBASE databases up to October 2018 to identify studies concerning PM and HP in patients treated with cytotoxic T-lymphocyte-associated protein 4 and programmed cell death (ligand) 1. The reference standard for diagnosis was confirmation by histology or response on follow-up imaging. Patients from included studies were randomly assigned to the training set or the validation set. Using machine learning (random forest tree algorithm) with the most-described six imaging and three clinical features, a multivariable prediction model (the signature) was developed and validated for diagnosing PM. Signature performance was evaluated using area under a receiver operating characteristic curves (AUCs).

Results: Out of 3174 screened articles, 65 were included totalising 122 patients (HP: 60 pts, PM: 62 pts). Complete radiological data were available in 82 pts (Training: 62 pts, Validation: 20 pts). The signature reached an AUC = 0.91 (0.82, 1.00), P < 10-8 in the training set and AUC = 0.94 (0.80, 1.00), P = 0.001 in the validation set. The signature predicted PM in lesions either ≥ 2 cm in size or < 2 cm if associated with heterogeneous contrast enhancement and cavernous extension.

Conclusion: An image-based signature was developed with machine learning and validated for differentiating PM from HP. This tool could be used by clinicians for enhanced decision-making in cancer patients undergoing ICB treatment with new-onset, concerning lesions of the pituitary gland.

Keywords: CTLA-4; Hypophisitis; Immune-related adverse events; Machine learning; PD-1; PD-L1.

Publication types

  • Research Support, Non-U.S. Gov't
  • Systematic Review

MeSH terms

  • Algorithms*
  • Autoimmune Hypophysitis / diagnosis*
  • Autoimmune Hypophysitis / etiology
  • B7-H1 Antigen / antagonists & inhibitors
  • B7-H1 Antigen / immunology
  • B7-H1 Antigen / metabolism
  • CTLA-4 Antigen / antagonists & inhibitors
  • CTLA-4 Antigen / immunology
  • CTLA-4 Antigen / metabolism
  • Diagnosis, Differential
  • Humans
  • Machine Learning*
  • Neoplasms / immunology
  • Neoplasms / pathology
  • Neoplasms / therapy*
  • Pituitary Neoplasms / diagnosis*
  • Pituitary Neoplasms / secondary
  • Programmed Cell Death 1 Receptor / antagonists & inhibitors
  • Programmed Cell Death 1 Receptor / immunology
  • Programmed Cell Death 1 Receptor / metabolism
  • ROC Curve
  • Radioimmunotherapy / adverse effects
  • Radioimmunotherapy / methods*

Substances

  • B7-H1 Antigen
  • CD274 protein, human
  • CTLA-4 Antigen
  • CTLA4 protein, human
  • PDCD1 protein, human
  • Programmed Cell Death 1 Receptor