Deep Learning-Based CT Image Characteristics and Postoperative Anal Function Restoration for Patients with Complex Anal Fistula

Objective. This study aimed to optimize the CT images of anal fistula patients using a convolutional neural network (CNN) algorithm to investigate the anal function recovery. Methods. 57 patients with complex anal fistulas admitted to our hospital from January 2020 to February 2021 were selected as...

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Main Authors: Lingling Han, Yue Chen, Weidong Cheng, He Bai, Jian Wang, Miaozhi Yu
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Journal of Healthcare Engineering
Online Access:http://dx.doi.org/10.1155/2021/1730158
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spelling doaj-ebbd39248c5e40ae8982a25564ef96cb2021-08-09T00:01:00ZengHindawi LimitedJournal of Healthcare Engineering2040-23092021-01-01202110.1155/2021/1730158Deep Learning-Based CT Image Characteristics and Postoperative Anal Function Restoration for Patients with Complex Anal FistulaLingling Han0Yue Chen1Weidong Cheng2He Bai3Jian Wang4Miaozhi Yu5Department of AnorectalDepartment of AnorectalDepartment of AnorectalDepartment of AnorectalDepartment of AnorectalDepartment of AnorectalObjective. This study aimed to optimize the CT images of anal fistula patients using a convolutional neural network (CNN) algorithm to investigate the anal function recovery. Methods. 57 patients with complex anal fistulas admitted to our hospital from January 2020 to February 2021 were selected as research subjects. Of them, CT images of 34 cases were processed using the deep learning neural network, defined as the experimental group, and the remaining unprocessed 23 cases were in the control group. Whether to process CT images depended on the patient’s own wish. The imaging results were compared with the results observed during the surgery. Results. It was found that, in the experimental group, the images were clearer, with DSC = 0.89, precision = 0.98, and recall = 0.87, indicating that the processing effects were good; that the CT imaging results in the experimental group were more consistent with those observed during the surgery, and the difference was notable (P<0.05). Furthermore, the experimental group had lower RP (mmHg), AMCP (mmHg) scores, and postoperative recurrence rate, with notable differences noted (P<0.05). Conclusion. CT images processed by deep learning are clearer, leading to higher accuracy of preoperative diagnosis, which is suggested in clinics.http://dx.doi.org/10.1155/2021/1730158
collection DOAJ
language English
format Article
sources DOAJ
author Lingling Han
Yue Chen
Weidong Cheng
He Bai
Jian Wang
Miaozhi Yu
spellingShingle Lingling Han
Yue Chen
Weidong Cheng
He Bai
Jian Wang
Miaozhi Yu
Deep Learning-Based CT Image Characteristics and Postoperative Anal Function Restoration for Patients with Complex Anal Fistula
Journal of Healthcare Engineering
author_facet Lingling Han
Yue Chen
Weidong Cheng
He Bai
Jian Wang
Miaozhi Yu
author_sort Lingling Han
title Deep Learning-Based CT Image Characteristics and Postoperative Anal Function Restoration for Patients with Complex Anal Fistula
title_short Deep Learning-Based CT Image Characteristics and Postoperative Anal Function Restoration for Patients with Complex Anal Fistula
title_full Deep Learning-Based CT Image Characteristics and Postoperative Anal Function Restoration for Patients with Complex Anal Fistula
title_fullStr Deep Learning-Based CT Image Characteristics and Postoperative Anal Function Restoration for Patients with Complex Anal Fistula
title_full_unstemmed Deep Learning-Based CT Image Characteristics and Postoperative Anal Function Restoration for Patients with Complex Anal Fistula
title_sort deep learning-based ct image characteristics and postoperative anal function restoration for patients with complex anal fistula
publisher Hindawi Limited
series Journal of Healthcare Engineering
issn 2040-2309
publishDate 2021-01-01
description Objective. This study aimed to optimize the CT images of anal fistula patients using a convolutional neural network (CNN) algorithm to investigate the anal function recovery. Methods. 57 patients with complex anal fistulas admitted to our hospital from January 2020 to February 2021 were selected as research subjects. Of them, CT images of 34 cases were processed using the deep learning neural network, defined as the experimental group, and the remaining unprocessed 23 cases were in the control group. Whether to process CT images depended on the patient’s own wish. The imaging results were compared with the results observed during the surgery. Results. It was found that, in the experimental group, the images were clearer, with DSC = 0.89, precision = 0.98, and recall = 0.87, indicating that the processing effects were good; that the CT imaging results in the experimental group were more consistent with those observed during the surgery, and the difference was notable (P<0.05). Furthermore, the experimental group had lower RP (mmHg), AMCP (mmHg) scores, and postoperative recurrence rate, with notable differences noted (P<0.05). Conclusion. CT images processed by deep learning are clearer, leading to higher accuracy of preoperative diagnosis, which is suggested in clinics.
url http://dx.doi.org/10.1155/2021/1730158
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