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Predicting therapeutic clinical trial enrollment for adult patients with low- and high-grade glioma using supervised machine learning.

Publication ,  Journal Article
Mehari, M; Warrier, G; Dada, A; Kabir, A; Haskell-Mendoza, AP; Tripathy, A; Jha, R; Nieblas-Bedolla, E; Jackson, JD; Gonzalez, AT; Reason, EH ...
Published in: Sci Adv
June 6, 2025

Therapeutic clinical trial enrollment does not match glioma incidence across demographics. Traditional statistical methods have identified independent predictors of trial enrollment; however, our understanding of the interactions between these factors remains limited. To test the interactive effects of demographic, socioeconomic, and oncologic variables on trial enrollment, we designed boosted neural networks (BNNs) for all glioma patients (n = 1042), women (n = 445, 42.7%), and minorities (n = 151, 14.5%) and externally validated these models [whole cohort, n = 230; women, n = 89 (38.7%); minority, n = 66 (28.7%)]. For the whole-cohort BNN, the most influential variables on enrollment were oncologic variables, including KPS [total effect (TE), 0.327], chemotherapy (TE, 0.326), tumor location (TE, 0.322), and seizures (TE, 0.239). The women-only BNN exhibited a similar trend. Conversely, for the minority-only BNN, socioeconomic variables [insurance status (TE, 0.213), occupation classification (TE, 0.204), and employment status (TE, 0.150)] were most influential. These results may help prioritize patient-specific initiatives to increase accrual.

Duke Scholars

Published In

Sci Adv

DOI

EISSN

2375-2548

Publication Date

June 6, 2025

Volume

11

Issue

23

Start / End Page

eadt5708

Location

United States

Related Subject Headings

  • Supervised Machine Learning
  • Socioeconomic Factors
  • Patient Selection
  • Neoplasm Grading
  • Middle Aged
  • Male
  • Humans
  • Glioma
  • Female
  • Clinical Trials as Topic
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Mehari, M., Warrier, G., Dada, A., Kabir, A., Haskell-Mendoza, A. P., Tripathy, A., … Hervey-Jumper, S. L. (2025). Predicting therapeutic clinical trial enrollment for adult patients with low- and high-grade glioma using supervised machine learning. Sci Adv, 11(23), eadt5708. https://doi.org/10.1126/sciadv.adt5708
Mehari, Mulki, Gayathri Warrier, Abraham Dada, Aymen Kabir, Aden P. Haskell-Mendoza, Arushi Tripathy, Rohan Jha, et al. “Predicting therapeutic clinical trial enrollment for adult patients with low- and high-grade glioma using supervised machine learning.Sci Adv 11, no. 23 (June 6, 2025): eadt5708. https://doi.org/10.1126/sciadv.adt5708.
Mehari M, Warrier G, Dada A, Kabir A, Haskell-Mendoza AP, Tripathy A, et al. Predicting therapeutic clinical trial enrollment for adult patients with low- and high-grade glioma using supervised machine learning. Sci Adv. 2025 Jun 6;11(23):eadt5708.
Mehari, Mulki, et al. “Predicting therapeutic clinical trial enrollment for adult patients with low- and high-grade glioma using supervised machine learning.Sci Adv, vol. 11, no. 23, June 2025, p. eadt5708. Pubmed, doi:10.1126/sciadv.adt5708.
Mehari M, Warrier G, Dada A, Kabir A, Haskell-Mendoza AP, Tripathy A, Jha R, Nieblas-Bedolla E, Jackson JD, Gonzalez AT, Reason EH, Flusche AM, Reihl S, Dalton T, Negussie M, Gonzales CN, Ambati VS, Desjardins A, Daniel AGS, Krishna S, Chang S, Porter A, Fecci PE, Hollon T, Chukwueke UN, Badal K, Molinaro AM, Hervey-Jumper SL. Predicting therapeutic clinical trial enrollment for adult patients with low- and high-grade glioma using supervised machine learning. Sci Adv. 2025 Jun 6;11(23):eadt5708.

Published In

Sci Adv

DOI

EISSN

2375-2548

Publication Date

June 6, 2025

Volume

11

Issue

23

Start / End Page

eadt5708

Location

United States

Related Subject Headings

  • Supervised Machine Learning
  • Socioeconomic Factors
  • Patient Selection
  • Neoplasm Grading
  • Middle Aged
  • Male
  • Humans
  • Glioma
  • Female
  • Clinical Trials as Topic