Cargando…

An artificial intelligence method for predicting postoperative urinary incontinence based on multiple anatomic parameters of MRI

BACKGROUND: Deep learning methods are increasingly applied in the medical field; however, their lack of interpretability remains a challenge. Captum is a tool that can be used to interpret neural network models by computing feature importance weights. Although Captum is an interpretable model, it is...

Descripción completa

Detalles Bibliográficos
Autores principales: Li, Jiakun, Fan, Xuemeng, Tang, Tong, Wu, Erman, Wang, Dongyue, Zong, Hui, Zhou, Xianghong, Li, Yifan, Zhang, Chichen, Zhang, Yihang, Wu, Rongrong, Wu, Cong, Yang, Lu, Shen, Bairong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10520312/
https://www.ncbi.nlm.nih.gov/pubmed/37767466
http://dx.doi.org/10.1016/j.heliyon.2023.e20337
_version_ 1785109889750663168
author Li, Jiakun
Fan, Xuemeng
Tang, Tong
Wu, Erman
Wang, Dongyue
Zong, Hui
Zhou, Xianghong
Li, Yifan
Zhang, Chichen
Zhang, Yihang
Wu, Rongrong
Wu, Cong
Yang, Lu
Shen, Bairong
author_facet Li, Jiakun
Fan, Xuemeng
Tang, Tong
Wu, Erman
Wang, Dongyue
Zong, Hui
Zhou, Xianghong
Li, Yifan
Zhang, Chichen
Zhang, Yihang
Wu, Rongrong
Wu, Cong
Yang, Lu
Shen, Bairong
author_sort Li, Jiakun
collection PubMed
description BACKGROUND: Deep learning methods are increasingly applied in the medical field; however, their lack of interpretability remains a challenge. Captum is a tool that can be used to interpret neural network models by computing feature importance weights. Although Captum is an interpretable model, it is rarely used to study medical problems, and there is a scarcity of data regarding MRI anatomical measurements for patients with prostate cancer after undergoing Robotic-Assisted Radical Prostatectomy (RARP). Consequently, predictive models for continence that use multiple types of anatomical MRI measurements are limited. METHODS: We explored the energy efficiency of deep learning models for predicting continence by analyzing MRI measurements. We analyzed and compared various statistical models and provided reference examples for the clinical application of interpretable deep-learning models. Patients who underwent RARP at our institution between July 2019 and December 2020 were included in this study. A series of clinical MRI anatomical measurements from these patients was used to discover continence features, and their impact on continence was primarily evaluated using a series of statistical methods and computational models. RESULTS: Age and six other anatomical measurements were identified as the top seven features of continence by the proposed model UINet7 with an accuracy of 0.97, and the first four of these features were also found by primary statistical analysis. CONCLUSIONS: This study fills the gaps in the in-depth investigation of continence features after RARP due to the limitations of clinical data and applicable models. We provide a pioneering example of the application of deep-learning models to clinical problems. The interpretability analysis of deep learning models has the potential for clinical applications.
format Online
Article
Text
id pubmed-10520312
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-105203122023-09-27 An artificial intelligence method for predicting postoperative urinary incontinence based on multiple anatomic parameters of MRI Li, Jiakun Fan, Xuemeng Tang, Tong Wu, Erman Wang, Dongyue Zong, Hui Zhou, Xianghong Li, Yifan Zhang, Chichen Zhang, Yihang Wu, Rongrong Wu, Cong Yang, Lu Shen, Bairong Heliyon Research Article BACKGROUND: Deep learning methods are increasingly applied in the medical field; however, their lack of interpretability remains a challenge. Captum is a tool that can be used to interpret neural network models by computing feature importance weights. Although Captum is an interpretable model, it is rarely used to study medical problems, and there is a scarcity of data regarding MRI anatomical measurements for patients with prostate cancer after undergoing Robotic-Assisted Radical Prostatectomy (RARP). Consequently, predictive models for continence that use multiple types of anatomical MRI measurements are limited. METHODS: We explored the energy efficiency of deep learning models for predicting continence by analyzing MRI measurements. We analyzed and compared various statistical models and provided reference examples for the clinical application of interpretable deep-learning models. Patients who underwent RARP at our institution between July 2019 and December 2020 were included in this study. A series of clinical MRI anatomical measurements from these patients was used to discover continence features, and their impact on continence was primarily evaluated using a series of statistical methods and computational models. RESULTS: Age and six other anatomical measurements were identified as the top seven features of continence by the proposed model UINet7 with an accuracy of 0.97, and the first four of these features were also found by primary statistical analysis. CONCLUSIONS: This study fills the gaps in the in-depth investigation of continence features after RARP due to the limitations of clinical data and applicable models. We provide a pioneering example of the application of deep-learning models to clinical problems. The interpretability analysis of deep learning models has the potential for clinical applications. Elsevier 2023-09-20 /pmc/articles/PMC10520312/ /pubmed/37767466 http://dx.doi.org/10.1016/j.heliyon.2023.e20337 Text en © 2023 The Authors 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 Research Article
Li, Jiakun
Fan, Xuemeng
Tang, Tong
Wu, Erman
Wang, Dongyue
Zong, Hui
Zhou, Xianghong
Li, Yifan
Zhang, Chichen
Zhang, Yihang
Wu, Rongrong
Wu, Cong
Yang, Lu
Shen, Bairong
An artificial intelligence method for predicting postoperative urinary incontinence based on multiple anatomic parameters of MRI
title An artificial intelligence method for predicting postoperative urinary incontinence based on multiple anatomic parameters of MRI
title_full An artificial intelligence method for predicting postoperative urinary incontinence based on multiple anatomic parameters of MRI
title_fullStr An artificial intelligence method for predicting postoperative urinary incontinence based on multiple anatomic parameters of MRI
title_full_unstemmed An artificial intelligence method for predicting postoperative urinary incontinence based on multiple anatomic parameters of MRI
title_short An artificial intelligence method for predicting postoperative urinary incontinence based on multiple anatomic parameters of MRI
title_sort artificial intelligence method for predicting postoperative urinary incontinence based on multiple anatomic parameters of mri
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10520312/
https://www.ncbi.nlm.nih.gov/pubmed/37767466
http://dx.doi.org/10.1016/j.heliyon.2023.e20337
work_keys_str_mv AT lijiakun anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT fanxuemeng anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT tangtong anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT wuerman anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT wangdongyue anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT zonghui anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT zhouxianghong anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT liyifan anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT zhangchichen anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT zhangyihang anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT wurongrong anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT wucong anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT yanglu anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT shenbairong anartificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT lijiakun artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT fanxuemeng artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT tangtong artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT wuerman artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT wangdongyue artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT zonghui artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT zhouxianghong artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT liyifan artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT zhangchichen artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT zhangyihang artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT wurongrong artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT wucong artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT yanglu artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri
AT shenbairong artificialintelligencemethodforpredictingpostoperativeurinaryincontinencebasedonmultipleanatomicparametersofmri