Cargando…

Machine Learning-Based Analysis in the Management of Iatrogenic Bile Duct Injury During Cholecystectomy: a Nationwide Multicenter Study

BACKGROUND: Iatrogenic bile duct injury (IBDI) is a challenging surgical complication. IBDI management can be guided by artificial intelligence models. Our study identified the factors associated with successful initial repair of IBDI and predicted the success of definitive repair based on patient r...

Descripción completa

Detalles Bibliográficos
Autores principales: Lopez-Lopez, Victor, Maupoey, Javier, López-Andujar, Rafael, Ramos, Emilio, Mils, Kristel, Martinez, Pedro Antonio, Valdivieso, Andres, Garcés-Albir, Marina, Sabater, Luis, Valladares, Luis Díez, Pérez, Sergio Annese, Flores, Benito, Brusadin, Roberto, Conesa, Asunción López, Cayuela, Valentin, Cortijo, Sagrario Martinez, Paterna, Sandra, Serrablo, Alejando, Sánchez-Cabús, Santiago, Gil, Antonio González, Masía, Jose Antonio González, Loinaz, Carmelo, Lucena, Jose Luis, Pastor, Patricia, Garcia-Zamora, Cristina, Calero, Alicia, Valiente, Juan, Minguillon, Antonio, Rotellar, Fernando, Ramia, Jose Manuel, Alcazar, Cándido, Aguilo, Javier, Cutillas, Jose, Kuemmerli, Christoph, Ruiperez-Valiente, Jose A., Robles-Campos, Ricardo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer US 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9439981/
https://www.ncbi.nlm.nih.gov/pubmed/35790677
http://dx.doi.org/10.1007/s11605-022-05398-7
_version_ 1784782209006174208
author Lopez-Lopez, Victor
Maupoey, Javier
López-Andujar, Rafael
Ramos, Emilio
Mils, Kristel
Martinez, Pedro Antonio
Valdivieso, Andres
Garcés-Albir, Marina
Sabater, Luis
Valladares, Luis Díez
Pérez, Sergio Annese
Flores, Benito
Brusadin, Roberto
Conesa, Asunción López
Cayuela, Valentin
Cortijo, Sagrario Martinez
Paterna, Sandra
Serrablo, Alejando
Sánchez-Cabús, Santiago
Gil, Antonio González
Masía, Jose Antonio González
Loinaz, Carmelo
Lucena, Jose Luis
Pastor, Patricia
Garcia-Zamora, Cristina
Calero, Alicia
Valiente, Juan
Minguillon, Antonio
Rotellar, Fernando
Ramia, Jose Manuel
Alcazar, Cándido
Aguilo, Javier
Cutillas, Jose
Kuemmerli, Christoph
Ruiperez-Valiente, Jose A.
Robles-Campos, Ricardo
author_facet Lopez-Lopez, Victor
Maupoey, Javier
López-Andujar, Rafael
Ramos, Emilio
Mils, Kristel
Martinez, Pedro Antonio
Valdivieso, Andres
Garcés-Albir, Marina
Sabater, Luis
Valladares, Luis Díez
Pérez, Sergio Annese
Flores, Benito
Brusadin, Roberto
Conesa, Asunción López
Cayuela, Valentin
Cortijo, Sagrario Martinez
Paterna, Sandra
Serrablo, Alejando
Sánchez-Cabús, Santiago
Gil, Antonio González
Masía, Jose Antonio González
Loinaz, Carmelo
Lucena, Jose Luis
Pastor, Patricia
Garcia-Zamora, Cristina
Calero, Alicia
Valiente, Juan
Minguillon, Antonio
Rotellar, Fernando
Ramia, Jose Manuel
Alcazar, Cándido
Aguilo, Javier
Cutillas, Jose
Kuemmerli, Christoph
Ruiperez-Valiente, Jose A.
Robles-Campos, Ricardo
author_sort Lopez-Lopez, Victor
collection PubMed
description BACKGROUND: Iatrogenic bile duct injury (IBDI) is a challenging surgical complication. IBDI management can be guided by artificial intelligence models. Our study identified the factors associated with successful initial repair of IBDI and predicted the success of definitive repair based on patient risk levels. METHODS: This is a retrospective multi-institution cohort of patients with IBDI after cholecystectomy conducted between 1990 and 2020. We implemented a decision tree analysis to determine the factors that contribute to successful initial repair and developed a risk-scoring model based on the Comprehensive Complication Index. RESULTS: We analyzed 748 patients across 22 hospitals. Our decision tree model was 82.8% accurate in predicting the success of the initial repair. Non-type E (p < 0.01), treatment in specialized centers (p < 0.01), and surgical repair (p < 0.001) were associated with better prognosis. The risk-scoring model was 82.3% (79.0–85.3%, 95% confidence interval [CI]) and 71.7% (63.8–78.7%, 95% CI) accurate in predicting success in the development and validation cohorts, respectively. Surgical repair, successful initial repair, and repair between 2 and 6 weeks were associated with better outcomes. DISCUSSION: Machine learning algorithms for IBDI are a novel tool may help to improve the decision-making process and guide management of these patients. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s11605-022-05398-7.
format Online
Article
Text
id pubmed-9439981
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Springer US
record_format MEDLINE/PubMed
spelling pubmed-94399812022-09-04 Machine Learning-Based Analysis in the Management of Iatrogenic Bile Duct Injury During Cholecystectomy: a Nationwide Multicenter Study Lopez-Lopez, Victor Maupoey, Javier López-Andujar, Rafael Ramos, Emilio Mils, Kristel Martinez, Pedro Antonio Valdivieso, Andres Garcés-Albir, Marina Sabater, Luis Valladares, Luis Díez Pérez, Sergio Annese Flores, Benito Brusadin, Roberto Conesa, Asunción López Cayuela, Valentin Cortijo, Sagrario Martinez Paterna, Sandra Serrablo, Alejando Sánchez-Cabús, Santiago Gil, Antonio González Masía, Jose Antonio González Loinaz, Carmelo Lucena, Jose Luis Pastor, Patricia Garcia-Zamora, Cristina Calero, Alicia Valiente, Juan Minguillon, Antonio Rotellar, Fernando Ramia, Jose Manuel Alcazar, Cándido Aguilo, Javier Cutillas, Jose Kuemmerli, Christoph Ruiperez-Valiente, Jose A. Robles-Campos, Ricardo J Gastrointest Surg Original Article BACKGROUND: Iatrogenic bile duct injury (IBDI) is a challenging surgical complication. IBDI management can be guided by artificial intelligence models. Our study identified the factors associated with successful initial repair of IBDI and predicted the success of definitive repair based on patient risk levels. METHODS: This is a retrospective multi-institution cohort of patients with IBDI after cholecystectomy conducted between 1990 and 2020. We implemented a decision tree analysis to determine the factors that contribute to successful initial repair and developed a risk-scoring model based on the Comprehensive Complication Index. RESULTS: We analyzed 748 patients across 22 hospitals. Our decision tree model was 82.8% accurate in predicting the success of the initial repair. Non-type E (p < 0.01), treatment in specialized centers (p < 0.01), and surgical repair (p < 0.001) were associated with better prognosis. The risk-scoring model was 82.3% (79.0–85.3%, 95% confidence interval [CI]) and 71.7% (63.8–78.7%, 95% CI) accurate in predicting success in the development and validation cohorts, respectively. Surgical repair, successful initial repair, and repair between 2 and 6 weeks were associated with better outcomes. DISCUSSION: Machine learning algorithms for IBDI are a novel tool may help to improve the decision-making process and guide management of these patients. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s11605-022-05398-7. Springer US 2022-07-05 2022 /pmc/articles/PMC9439981/ /pubmed/35790677 http://dx.doi.org/10.1007/s11605-022-05398-7 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Original Article
Lopez-Lopez, Victor
Maupoey, Javier
López-Andujar, Rafael
Ramos, Emilio
Mils, Kristel
Martinez, Pedro Antonio
Valdivieso, Andres
Garcés-Albir, Marina
Sabater, Luis
Valladares, Luis Díez
Pérez, Sergio Annese
Flores, Benito
Brusadin, Roberto
Conesa, Asunción López
Cayuela, Valentin
Cortijo, Sagrario Martinez
Paterna, Sandra
Serrablo, Alejando
Sánchez-Cabús, Santiago
Gil, Antonio González
Masía, Jose Antonio González
Loinaz, Carmelo
Lucena, Jose Luis
Pastor, Patricia
Garcia-Zamora, Cristina
Calero, Alicia
Valiente, Juan
Minguillon, Antonio
Rotellar, Fernando
Ramia, Jose Manuel
Alcazar, Cándido
Aguilo, Javier
Cutillas, Jose
Kuemmerli, Christoph
Ruiperez-Valiente, Jose A.
Robles-Campos, Ricardo
Machine Learning-Based Analysis in the Management of Iatrogenic Bile Duct Injury During Cholecystectomy: a Nationwide Multicenter Study
title Machine Learning-Based Analysis in the Management of Iatrogenic Bile Duct Injury During Cholecystectomy: a Nationwide Multicenter Study
title_full Machine Learning-Based Analysis in the Management of Iatrogenic Bile Duct Injury During Cholecystectomy: a Nationwide Multicenter Study
title_fullStr Machine Learning-Based Analysis in the Management of Iatrogenic Bile Duct Injury During Cholecystectomy: a Nationwide Multicenter Study
title_full_unstemmed Machine Learning-Based Analysis in the Management of Iatrogenic Bile Duct Injury During Cholecystectomy: a Nationwide Multicenter Study
title_short Machine Learning-Based Analysis in the Management of Iatrogenic Bile Duct Injury During Cholecystectomy: a Nationwide Multicenter Study
title_sort machine learning-based analysis in the management of iatrogenic bile duct injury during cholecystectomy: a nationwide multicenter study
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9439981/
https://www.ncbi.nlm.nih.gov/pubmed/35790677
http://dx.doi.org/10.1007/s11605-022-05398-7
work_keys_str_mv AT lopezlopezvictor machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT maupoeyjavier machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT lopezandujarrafael machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT ramosemilio machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT milskristel machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT martinezpedroantonio machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT valdiviesoandres machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT garcesalbirmarina machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT sabaterluis machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT valladaresluisdiez machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT perezsergioannese machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT floresbenito machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT brusadinroberto machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT conesaasuncionlopez machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT cayuelavalentin machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT cortijosagrariomartinez machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT paternasandra machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT serrabloalejando machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT sanchezcabussantiago machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT gilantoniogonzalez machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT masiajoseantoniogonzalez machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT loinazcarmelo machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT lucenajoseluis machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT pastorpatricia machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT garciazamoracristina machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT caleroalicia machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT valientejuan machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT minguillonantonio machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT rotellarfernando machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT ramiajosemanuel machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT alcazarcandido machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT aguilojavier machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT cutillasjose machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT kuemmerlichristoph machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT ruiperezvalientejosea machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy
AT roblescamposricardo machinelearningbasedanalysisinthemanagementofiatrogenicbileductinjuryduringcholecystectomyanationwidemulticenterstudy