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Prediction of Postoperative Deterioration in Cardiac Surgery Patients Using Electronic Health Record and Physiologic Waveform Data

dc.contributor.authorMathis, MR
dc.contributor.authorEngoren, MC
dc.contributor.authorWilliams, AM
dc.contributor.authorBiesterveld, BE
dc.contributor.authorCroteau, AJ
dc.contributor.authorCai, L
dc.contributor.authorKim, RB
dc.contributor.authorLiu, G
dc.contributor.authorWard, KR
dc.contributor.authorNajarian, K
dc.contributor.authorGryak, J
dc.coverage.spatialUnited States
dc.date.accessioned2022-11-21T15:06:38Z
dc.date.available2022-11-21T15:06:38Z
dc.date.issued2022-11-01
dc.identifier.issn0003-3022
dc.identifier.issn1528-1175
dc.identifier.urihttps://www.ncbi.nlm.nih.gov/pubmed/35950802
dc.identifier.urihttps://hdl.handle.net/2027.42/175153en
dc.description.abstractBACKGROUND: Postoperative hemodynamic deterioration among cardiac surgical patients can indicate or lead to adverse outcomes. Whereas prediction models for such events using electronic health records or physiologic waveform data are previously described, their combined value remains incompletely defined. The authors hypothesized that models incorporating electronic health record and processed waveform signal data (electrocardiogram lead II, pulse plethysmography, arterial catheter tracing) would yield improved performance versus either modality alone. METHODS: Intensive care unit data were reviewed after elective adult cardiac surgical procedures at an academic center between 2013 and 2020. Model features included electronic health record features and physiologic waveforms. Tensor decomposition was used for waveform feature reduction. Machine learning-based prediction models included a 2013 to 2017 training set and a 2017 to 2020 temporal holdout test set. The primary outcome was a postoperative deterioration event, defined as a composite of low cardiac index of less than 2.0 ml min-1 m-2, mean arterial pressure of less than 55 mmHg sustained for 120 min or longer, new or escalated inotrope/vasopressor infusion, epinephrine bolus of 1 mg or more, or intensive care unit mortality. Prediction models analyzed data 8 h before events. RESULTS: Among 1,555 cases, 185 (12%) experienced 276 deterioration events, most commonly including low cardiac index (7.0% of patients), new inotrope (1.9%), and sustained hypotension (1.4%). The best performing model on the 2013 to 2017 training set yielded a C-statistic of 0.803 (95% CI, 0.799 to 0.807), although performance was substantially lower in the 2017 to 2020 test set (0.709, 0.705 to 0.712). Test set performance of the combined model was greater than corresponding models limited to solely electronic health record features (0.641; 95% CI, 0.637 to 0.646) or waveform features (0.697; 95% CI, 0.693 to 0.701). CONCLUSIONS: Clinical deterioration prediction models combining electronic health record data and waveform data were superior to either modality alone, and performance of combined models was primarily driven by waveform data. Decreased performance of prediction models during temporal validation may be explained by data set shift, a core challenge of healthcare prediction modeling.
dc.format.mediumPrint
dc.languageeng
dc.publisherWolters Kluwer
dc.subjectHumans
dc.subjectAdult
dc.subjectElectronic Health Records
dc.subjectMachine Learning
dc.subjectHypotension
dc.subjectCardiac Surgical Procedures
dc.subjectEpinephrine
dc.titlePrediction of Postoperative Deterioration in Cardiac Surgery Patients Using Electronic Health Record and Physiologic Waveform Data
dc.typeArticle
dc.identifier.pmid35950802
dc.description.bitstreamurlhttp://deepblue.lib.umich.edu/bitstream/2027.42/175153/2/Deterioration after Cardiac Surgery - EHR and Waveform Data.pdf
dc.identifier.doi10.1097/ALN.0000000000004345
dc.identifier.doihttps://dx.doi.org/10.7302/6613
dc.identifier.sourceAnesthesiology
dc.description.versionPublished version
dc.date.updated2022-11-21T15:06:30Z
dc.identifier.orcid0000-0002-9697-2212
dc.identifier.orcid0000-0003-4485-6612
dc.identifier.volume137
dc.identifier.issue5
dc.identifier.startpage586
dc.identifier.endpage601
dc.identifier.name-orcidMathis, MR; 0000-0002-9697-2212
dc.identifier.name-orcidEngoren, MC
dc.identifier.name-orcidWilliams, AM
dc.identifier.name-orcidBiesterveld, BE
dc.identifier.name-orcidCroteau, AJ
dc.identifier.name-orcidCai, L
dc.identifier.name-orcidKim, RB
dc.identifier.name-orcidLiu, G
dc.identifier.name-orcidWard, KR
dc.identifier.name-orcidNajarian, K; 0000-0003-4485-6612
dc.identifier.name-orcidGryak, J
dc.working.doi10.7302/6613en
dc.owningcollnameAnesthesiology, Department of


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