Cargando…

Patient-specific comorbidities as prognostic variables for survival in myelofibrosis

Treatment decisions in primary myelofibrosis (PMF) are guided by numerous prognostic systems. Patient-specific comorbidities have influence on treatment-related survival and are considered in clinical contexts but have not been routinely incorporated into current prognostic models. We hypothesized t...

Descripción completa

Detalles Bibliográficos
Autores principales: Sochacki, Andrew L., Bejan, Cosmin Adrian, Zhao, Shilin, Patel, Ameet, Kishtagari, Ashwin, Spaulding, Travis P., Silver, Alexander J., Stockton, Shannon S., Pugh, Kelly, Dorand, R. Dixon, Bhatta, Manasa, Strayer, Nicholas, Zhang, Siwei, Snider, Christina A., Stricker, Thomas, Nazha, Aziz, Bick, Alexander G., Xu, Yaomin, Savona, Michael R.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The American Society of Hematology 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9989522/
https://www.ncbi.nlm.nih.gov/pubmed/35420683
http://dx.doi.org/10.1182/bloodadvances.2021006318
_version_ 1784901782874357760
author Sochacki, Andrew L.
Bejan, Cosmin Adrian
Zhao, Shilin
Patel, Ameet
Kishtagari, Ashwin
Spaulding, Travis P.
Silver, Alexander J.
Stockton, Shannon S.
Pugh, Kelly
Dorand, R. Dixon
Bhatta, Manasa
Strayer, Nicholas
Zhang, Siwei
Snider, Christina A.
Stricker, Thomas
Nazha, Aziz
Bick, Alexander G.
Xu, Yaomin
Savona, Michael R.
author_facet Sochacki, Andrew L.
Bejan, Cosmin Adrian
Zhao, Shilin
Patel, Ameet
Kishtagari, Ashwin
Spaulding, Travis P.
Silver, Alexander J.
Stockton, Shannon S.
Pugh, Kelly
Dorand, R. Dixon
Bhatta, Manasa
Strayer, Nicholas
Zhang, Siwei
Snider, Christina A.
Stricker, Thomas
Nazha, Aziz
Bick, Alexander G.
Xu, Yaomin
Savona, Michael R.
author_sort Sochacki, Andrew L.
collection PubMed
description Treatment decisions in primary myelofibrosis (PMF) are guided by numerous prognostic systems. Patient-specific comorbidities have influence on treatment-related survival and are considered in clinical contexts but have not been routinely incorporated into current prognostic models. We hypothesized that patient-specific comorbidities would inform prognosis and could be incorporated into a quantitative score. All patients with PMF or secondary myelofibrosis with available DNA and comprehensive electronic health record (EHR) data treated at Vanderbilt University Medical Center between 1995 and 2016 were identified within Vanderbilt’s Synthetic Derivative and BioVU Biobank. We recapitulated established PMF risk scores (eg, Dynamic International Prognostic Scoring System [DIPSS], DIPSS plus, Genetics-Based Prognostic Scoring System, Mutation-Enhanced International Prognostic Scoring System 70+) and comorbidities through EHR chart extraction and next-generation sequencing on biobanked peripheral blood DNA. The impact of comorbidities was assessed via DIPSS-adjusted overall survival using Bonferroni correction. Comorbidities associated with inferior survival include renal failure/dysfunction (hazard ratio [HR], 4.3; 95% confidence interval [95% CI], 2.1-8.9; P = .0001), intracranial hemorrhage (HR, 28.7; 95% CI, 7.0-116.8; P = 2.83e-06), invasive fungal infection (HR, 41.2; 95% CI, 7.2-235.2; P = 2.90e-05), and chronic encephalopathy (HR, 15.1; 95% CI, 3.8-59.4; P = .0001). The extended DIPSS model including all 4 significant comorbidities showed a significantly higher discriminating power (C-index 0.81; 95% CI, 0.78-0.84) than the original DIPSS model (C-index 0.73; 95% CI, 0.70-0.77). In summary, we repurposed an institutional biobank to identify and risk-classify an uncommon hematologic malignancy by established (eg, DIPSS) and other clinical and pathologic factors (eg, comorbidities) in an unbiased fashion. The inclusion of comorbidities into risk evaluation may augment prognostic capability of future genetics-based scoring systems.
format Online
Article
Text
id pubmed-9989522
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher The American Society of Hematology
record_format MEDLINE/PubMed
spelling pubmed-99895222023-03-08 Patient-specific comorbidities as prognostic variables for survival in myelofibrosis Sochacki, Andrew L. Bejan, Cosmin Adrian Zhao, Shilin Patel, Ameet Kishtagari, Ashwin Spaulding, Travis P. Silver, Alexander J. Stockton, Shannon S. Pugh, Kelly Dorand, R. Dixon Bhatta, Manasa Strayer, Nicholas Zhang, Siwei Snider, Christina A. Stricker, Thomas Nazha, Aziz Bick, Alexander G. Xu, Yaomin Savona, Michael R. Blood Adv Myeloid Neoplasia Treatment decisions in primary myelofibrosis (PMF) are guided by numerous prognostic systems. Patient-specific comorbidities have influence on treatment-related survival and are considered in clinical contexts but have not been routinely incorporated into current prognostic models. We hypothesized that patient-specific comorbidities would inform prognosis and could be incorporated into a quantitative score. All patients with PMF or secondary myelofibrosis with available DNA and comprehensive electronic health record (EHR) data treated at Vanderbilt University Medical Center between 1995 and 2016 were identified within Vanderbilt’s Synthetic Derivative and BioVU Biobank. We recapitulated established PMF risk scores (eg, Dynamic International Prognostic Scoring System [DIPSS], DIPSS plus, Genetics-Based Prognostic Scoring System, Mutation-Enhanced International Prognostic Scoring System 70+) and comorbidities through EHR chart extraction and next-generation sequencing on biobanked peripheral blood DNA. The impact of comorbidities was assessed via DIPSS-adjusted overall survival using Bonferroni correction. Comorbidities associated with inferior survival include renal failure/dysfunction (hazard ratio [HR], 4.3; 95% confidence interval [95% CI], 2.1-8.9; P = .0001), intracranial hemorrhage (HR, 28.7; 95% CI, 7.0-116.8; P = 2.83e-06), invasive fungal infection (HR, 41.2; 95% CI, 7.2-235.2; P = 2.90e-05), and chronic encephalopathy (HR, 15.1; 95% CI, 3.8-59.4; P = .0001). The extended DIPSS model including all 4 significant comorbidities showed a significantly higher discriminating power (C-index 0.81; 95% CI, 0.78-0.84) than the original DIPSS model (C-index 0.73; 95% CI, 0.70-0.77). In summary, we repurposed an institutional biobank to identify and risk-classify an uncommon hematologic malignancy by established (eg, DIPSS) and other clinical and pathologic factors (eg, comorbidities) in an unbiased fashion. The inclusion of comorbidities into risk evaluation may augment prognostic capability of future genetics-based scoring systems. The American Society of Hematology 2022-04-18 /pmc/articles/PMC9989522/ /pubmed/35420683 http://dx.doi.org/10.1182/bloodadvances.2021006318 Text en © 2023 by The American Society of Hematology. Licensed under Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0), permitting only noncommercial, nonderivative use with attribution. All other rights reserved. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Myeloid Neoplasia
Sochacki, Andrew L.
Bejan, Cosmin Adrian
Zhao, Shilin
Patel, Ameet
Kishtagari, Ashwin
Spaulding, Travis P.
Silver, Alexander J.
Stockton, Shannon S.
Pugh, Kelly
Dorand, R. Dixon
Bhatta, Manasa
Strayer, Nicholas
Zhang, Siwei
Snider, Christina A.
Stricker, Thomas
Nazha, Aziz
Bick, Alexander G.
Xu, Yaomin
Savona, Michael R.
Patient-specific comorbidities as prognostic variables for survival in myelofibrosis
title Patient-specific comorbidities as prognostic variables for survival in myelofibrosis
title_full Patient-specific comorbidities as prognostic variables for survival in myelofibrosis
title_fullStr Patient-specific comorbidities as prognostic variables for survival in myelofibrosis
title_full_unstemmed Patient-specific comorbidities as prognostic variables for survival in myelofibrosis
title_short Patient-specific comorbidities as prognostic variables for survival in myelofibrosis
title_sort patient-specific comorbidities as prognostic variables for survival in myelofibrosis
topic Myeloid Neoplasia
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9989522/
https://www.ncbi.nlm.nih.gov/pubmed/35420683
http://dx.doi.org/10.1182/bloodadvances.2021006318
work_keys_str_mv AT sochackiandrewl patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT bejancosminadrian patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT zhaoshilin patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT patelameet patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT kishtagariashwin patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT spauldingtravisp patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT silveralexanderj patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT stocktonshannons patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT pughkelly patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT dorandrdixon patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT bhattamanasa patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT strayernicholas patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT zhangsiwei patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT sniderchristinaa patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT strickerthomas patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT nazhaaziz patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT bickalexanderg patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT xuyaomin patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis
AT savonamichaelr patientspecificcomorbiditiesasprognosticvariablesforsurvivalinmyelofibrosis