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Utilizing Precision Medicine to Estimate Timing for Surgical Closure of Traumatic Extremity Wounds.

Publication ,  Journal Article
Lisboa, FA; Dente, CJ; Schobel, SA; Khatri, V; Potter, BK; Kirk, AD; Elster, EA
Published in: Ann Surg
September 2019

BACKGROUND: Both the frequency and high complication rates associated with extremity wounds in recent military conflicts have highlighted the need for clinical decision support tools (CDST) to decrease time to wound closure and wound failure rates. METHODS: Machine learning was used to estimate both successful wound closure (based on penultimate debridement biomarker data) and the necessary number of surgical debridements (based on presentation biomarkers) in 73 service members treated according to military guidelines based on clinical data and the local/systemic level of 32 cytokines. Models were trained to estimate successful closure including an additional 8 of 80 civilian patients with similar injury patterns. Previous analysis has demonstrated the potential to reduce the number of operative debridements by 2, with resulting decreases in ICU and hospital LOS, while decreasing the rate of wound failure. RESULTS: Analysis showed similar cytokine responses when civilians followed a military-like treatment schedule with surgical debridements every 24 to 72 hours. A model estimating successful closure had AUC of 0.89. Model performance in civilians degraded when these had a debridement interval > 72 hours (73 of the 80 civilians). A separate model estimating the number of debridements required to achieve successful closure had a multiclass AUC of 0.81. CONCLUSION: CDSTs can be developed using biologically compatible civilian and military populations as cytokine response is highly influenced by surgical treatment. Our CDSTs may help identify who may require serial debridements versus early closure, and precisely when traumatic wounds should optimally be closed.

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Published In

Ann Surg

DOI

EISSN

1528-1140

Publication Date

September 2019

Volume

270

Issue

3

Start / End Page

535 / 543

Location

United States

Related Subject Headings

  • Wounds and Injuries
  • Wound Healing
  • Wound Closure Techniques
  • Treatment Outcome
  • Time Factors
  • Survival Analysis
  • Surgery
  • Risk Assessment
  • Retrospective Studies
  • Proportional Hazards Models
 

Citation

APA
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Lisboa, F. A., Dente, C. J., Schobel, S. A., Khatri, V., Potter, B. K., Kirk, A. D., & Elster, E. A. (2019). Utilizing Precision Medicine to Estimate Timing for Surgical Closure of Traumatic Extremity Wounds. Ann Surg, 270(3), 535–543. https://doi.org/10.1097/SLA.0000000000003470
Lisboa, Felipe A., Christopher J. Dente, Seth A. Schobel, Vivek Khatri, Benjamin K. Potter, Allan D. Kirk, and Eric A. Elster. “Utilizing Precision Medicine to Estimate Timing for Surgical Closure of Traumatic Extremity Wounds.Ann Surg 270, no. 3 (September 2019): 535–43. https://doi.org/10.1097/SLA.0000000000003470.
Lisboa FA, Dente CJ, Schobel SA, Khatri V, Potter BK, Kirk AD, et al. Utilizing Precision Medicine to Estimate Timing for Surgical Closure of Traumatic Extremity Wounds. Ann Surg. 2019 Sep;270(3):535–43.
Lisboa, Felipe A., et al. “Utilizing Precision Medicine to Estimate Timing for Surgical Closure of Traumatic Extremity Wounds.Ann Surg, vol. 270, no. 3, Sept. 2019, pp. 535–43. Pubmed, doi:10.1097/SLA.0000000000003470.
Lisboa FA, Dente CJ, Schobel SA, Khatri V, Potter BK, Kirk AD, Elster EA. Utilizing Precision Medicine to Estimate Timing for Surgical Closure of Traumatic Extremity Wounds. Ann Surg. 2019 Sep;270(3):535–543.

Published In

Ann Surg

DOI

EISSN

1528-1140

Publication Date

September 2019

Volume

270

Issue

3

Start / End Page

535 / 543

Location

United States

Related Subject Headings

  • Wounds and Injuries
  • Wound Healing
  • Wound Closure Techniques
  • Treatment Outcome
  • Time Factors
  • Survival Analysis
  • Surgery
  • Risk Assessment
  • Retrospective Studies
  • Proportional Hazards Models