Diagnosis trajectories of prior multi-morbidity predict sepsis mortality

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Diagnosis trajectories of prior multi-morbidity predict sepsis mortality. / Beck, Mette K; Jensen, Anders Boeck; Nielsen, Annelaura Bach; Perner, Anders; Moseley, Pope L; Brunak, Søren.

In: Scientific Reports, Vol. 6, 36624, 04.11.2016.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Beck, MK, Jensen, AB, Nielsen, AB, Perner, A, Moseley, PL & Brunak, S 2016, 'Diagnosis trajectories of prior multi-morbidity predict sepsis mortality', Scientific Reports, vol. 6, 36624. https://doi.org/10.1038/srep36624

APA

Beck, M. K., Jensen, A. B., Nielsen, A. B., Perner, A., Moseley, P. L., & Brunak, S. (2016). Diagnosis trajectories of prior multi-morbidity predict sepsis mortality. Scientific Reports, 6, [36624]. https://doi.org/10.1038/srep36624

Vancouver

Beck MK, Jensen AB, Nielsen AB, Perner A, Moseley PL, Brunak S. Diagnosis trajectories of prior multi-morbidity predict sepsis mortality. Scientific Reports. 2016 Nov 4;6. 36624. https://doi.org/10.1038/srep36624

Author

Beck, Mette K ; Jensen, Anders Boeck ; Nielsen, Annelaura Bach ; Perner, Anders ; Moseley, Pope L ; Brunak, Søren. / Diagnosis trajectories of prior multi-morbidity predict sepsis mortality. In: Scientific Reports. 2016 ; Vol. 6.

Bibtex

@article{f9ba5a6e4b934ab1a1a1d49db093dc65,
title = "Diagnosis trajectories of prior multi-morbidity predict sepsis mortality",
abstract = "Sepsis affects millions of people every year, many of whom will die. In contrast to current survival prediction models for sepsis patients that primarily are based on data from within-admission clinical measurements (e.g. vital parameters and blood values), we aim for using the full disease history to predict sepsis mortality. We benefit from data in electronic medical records covering all hospital encounters in Denmark from 1996 to 2014. This data set included 6.6 million patients of whom almost 120,000 were diagnosed with the ICD-10 code: A41 'Other sepsis'. Interestingly, patients following recurrent trajectories of time-ordered co-morbidities had significantly increased sepsis mortality compared to those who did not follow a trajectory. We identified trajectories which significantly altered sepsis mortality, and found three major starting points in a combined temporal sepsis network: Alcohol abuse, Diabetes and Cardio-vascular diagnoses. Many cancers also increased sepsis mortality. Using the trajectory based stratification model we explain contradictory reports in relation to diabetes that recently have appeared in the literature. Finally, we compared the predictive power using 18.5 years of disease history to scoring based on within-admission clinical measurements emphasizing the value of long term data in novel patient scores that combine the two types of data.",
author = "Beck, {Mette K} and Jensen, {Anders Boeck} and Nielsen, {Annelaura Bach} and Anders Perner and Moseley, {Pope L} and S{\o}ren Brunak",
note = "AR2016",
year = "2016",
month = nov,
day = "4",
doi = "10.1038/srep36624",
language = "English",
volume = "6",
journal = "Scientific Reports",
issn = "2045-2322",
publisher = "nature publishing group",

}

RIS

TY - JOUR

T1 - Diagnosis trajectories of prior multi-morbidity predict sepsis mortality

AU - Beck, Mette K

AU - Jensen, Anders Boeck

AU - Nielsen, Annelaura Bach

AU - Perner, Anders

AU - Moseley, Pope L

AU - Brunak, Søren

N1 - AR2016

PY - 2016/11/4

Y1 - 2016/11/4

N2 - Sepsis affects millions of people every year, many of whom will die. In contrast to current survival prediction models for sepsis patients that primarily are based on data from within-admission clinical measurements (e.g. vital parameters and blood values), we aim for using the full disease history to predict sepsis mortality. We benefit from data in electronic medical records covering all hospital encounters in Denmark from 1996 to 2014. This data set included 6.6 million patients of whom almost 120,000 were diagnosed with the ICD-10 code: A41 'Other sepsis'. Interestingly, patients following recurrent trajectories of time-ordered co-morbidities had significantly increased sepsis mortality compared to those who did not follow a trajectory. We identified trajectories which significantly altered sepsis mortality, and found three major starting points in a combined temporal sepsis network: Alcohol abuse, Diabetes and Cardio-vascular diagnoses. Many cancers also increased sepsis mortality. Using the trajectory based stratification model we explain contradictory reports in relation to diabetes that recently have appeared in the literature. Finally, we compared the predictive power using 18.5 years of disease history to scoring based on within-admission clinical measurements emphasizing the value of long term data in novel patient scores that combine the two types of data.

AB - Sepsis affects millions of people every year, many of whom will die. In contrast to current survival prediction models for sepsis patients that primarily are based on data from within-admission clinical measurements (e.g. vital parameters and blood values), we aim for using the full disease history to predict sepsis mortality. We benefit from data in electronic medical records covering all hospital encounters in Denmark from 1996 to 2014. This data set included 6.6 million patients of whom almost 120,000 were diagnosed with the ICD-10 code: A41 'Other sepsis'. Interestingly, patients following recurrent trajectories of time-ordered co-morbidities had significantly increased sepsis mortality compared to those who did not follow a trajectory. We identified trajectories which significantly altered sepsis mortality, and found three major starting points in a combined temporal sepsis network: Alcohol abuse, Diabetes and Cardio-vascular diagnoses. Many cancers also increased sepsis mortality. Using the trajectory based stratification model we explain contradictory reports in relation to diabetes that recently have appeared in the literature. Finally, we compared the predictive power using 18.5 years of disease history to scoring based on within-admission clinical measurements emphasizing the value of long term data in novel patient scores that combine the two types of data.

U2 - 10.1038/srep36624

DO - 10.1038/srep36624

M3 - Journal article

C2 - 27812043

VL - 6

JO - Scientific Reports

JF - Scientific Reports

SN - 2045-2322

M1 - 36624

ER -

ID: 169010687