Clinical and economic evaluation of a proteomic biomarker preterm birth risk predictor: cost-effectiveness modeling of prenatal interventions applied to predicted higher-risk pregnancies within a large and diverse cohort

dc.contributor.authorBurchard, Julja
dc.contributor.authorMarkenson, Glenn R.
dc.contributor.authorSaade, George R.
dc.contributor.authorLaurent, Louise C.
dc.contributor.authorHeyborne, Kent D.
dc.contributor.authorCoonrod, Dean V.
dc.contributor.authorSchoen, Corina N.
dc.contributor.authorBaxter, Jason K.
dc.contributor.authorHaas, David M.
dc.contributor.authorLongo, Sherri A.
dc.contributor.authorSullivan, Scott A.
dc.contributor.authorWheeler, Sarahn M.
dc.contributor.authorPereira, Leonardo M.
dc.contributor.authorBoggess, Kim A.
dc.contributor.authorHawk, Angela F.
dc.contributor.authorCrockett, Amy H.
dc.contributor.authorTreacy, Ryan
dc.contributor.authorFox, Angela C.
dc.contributor.authorPolpitiya, Ashoka D.
dc.contributor.authorFleischer, Tracey C.
dc.contributor.authorGarite, Thomas J.
dc.contributor.authorBoniface, J. Jay
dc.contributor.authorZupancic, John A. F.
dc.contributor.authorCritchfield, Gregory C.
dc.contributor.authorKearney, Paul E.
dc.contributor.departmentObstetrics and Gynecology, School of Medicine
dc.date.accessioned2024-06-21T17:34:42Z
dc.date.available2024-06-21T17:34:42Z
dc.date.issued2022-12
dc.description.abstractObjectives Preterm birth occurs in more than 10% of U.S. births and is the leading cause of U.S. neonatal deaths, with estimated annual costs exceeding $25 billion USD. Using real-world data, we modeled the potential clinical and economic utility of a prematurity-reduction program comprising screening in a racially and ethnically diverse population with a validated proteomic biomarker risk predictor, followed by case management with or without pharmacological treatment. Methods The ACCORDANT microsimulation model used individual patient data from a prespecified, randomly selected sub-cohort (N = 847) of a multicenter, observational study of U.S. subjects receiving standard obstetric care with masked risk predictor assessment (TREETOP; NCT02787213). All subjects were included in three arms across 500 simulated trials: standard of care (SoC, control); risk predictor/case management comprising increased outreach, education and specialist care (RP-CM, active); and multimodal management (risk predictor/case management with pharmacological treatment) (RP-MM, active). In the active arms, only subjects stratified as higher risk by the predictor were modeled as receiving the intervention, whereas lower-risk subjects received standard care. Higher-risk subjects’ gestational ages at birth were shifted based on published efficacies, and dependent outcomes, calibrated using national datasets, were changed accordingly. Subjects otherwise retained their original TREETOP outcomes. Arms were compared using survival analysis for neonatal and maternal hospital length of stay, bootstrap intervals for neonatal cost, and Fisher’s exact test for neonatal morbidity/mortality (significance, p < .05). Results The model predicted improvements for all outcomes. RP-CM decreased neonatal and maternal hospital stay by 19% (p = .029) and 8.5% (p = .001), respectively; neonatal costs’ point estimate by 16% (p = .098); and moderate-to-severe neonatal morbidity/mortality by 29% (p = .025). RP-MM strengthened observed reductions and significance. Point estimates of benefit did not differ by race/ethnicity. Conclusions Modeled evaluation of a biomarker-based test-and-treat strategy in a diverse population predicts clinically and economically meaningful improvements in neonatal and maternal outcomes.
dc.eprint.versionFinal published version
dc.identifier.citationBurchard, J., Markenson, G. R., Saade, G. R., Laurent, L. C., Heyborne, K. D., Coonrod, D. V., Schoen, C. N., Baxter, J. K., Haas, D. M., Longo, S. A., Sullivan, S. A., Wheeler, S. M., Pereira, L. M., Boggess, K. A., Hawk, A. F., Crockett, A. H., Treacy, R., Fox, A. C., Polpitiya, A. D., … Kearney, P. E. (2022). Clinical and economic evaluation of a proteomic biomarker preterm birth risk predictor: Cost-effectiveness modeling of prenatal interventions applied to predicted higher-risk pregnancies within a large and diverse cohort. Journal of Medical Economics, 25(1), 1255–1266. https://doi.org/10.1080/13696998.2022.2147771
dc.identifier.urihttps://hdl.handle.net/1805/41757
dc.language.isoen_US
dc.publisherTaylor & Francis
dc.relation.isversionof10.1080/13696998.2022.2147771
dc.relation.journalJournal of Medical Economics
dc.rightsAttribution 4.0 Internationalen
dc.rights.urihttps://creativecommons.org/licenses/by/4.0
dc.sourcePublisher
dc.subjectpreterm birth
dc.subjectneonatal deaths
dc.subjectprematurity-reduction program
dc.subjectrisk predictor
dc.subjectpharmacological treatment
dc.titleClinical and economic evaluation of a proteomic biomarker preterm birth risk predictor: cost-effectiveness modeling of prenatal interventions applied to predicted higher-risk pregnancies within a large and diverse cohort
dc.typeArticle
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