Deep learning for appendicitis: development of a three-dimensional localization model on CT.

IF 2.1 4区 医学
Taku Takaishi, Tatsuya Kawai, Yoshimasa Kokubo, Takumi Fujinaga, Yoshinao Ojio, Tatsuhito Yamamoto, Kana Hayashi, Yusei Owatari, Hirotaka Ito, Akio Hiwatashi
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引用次数: 0

Abstract

Purpose: To develop and evaluate a deep learning model for detecting appendicitis on abdominal CT.

Materials and methods: This retrospective single-center study included 567 CTs of appendicitis patients (330 males, age range 20-96) obtained between 2011 and 2020, randomly split into training (n = 517) and validation (n = 50) sets. The validation set was supplemented with 50 control CTs performed for acute abdomen. For a test dataset, 100 appendicitis CTs and 100 control CTs were consecutively collected from a separate period after 2021. Exclusion criteria included age < 20, perforation, unclear appendix, and appendix tumors. Appendicitis CTs were annotated with three-dimensional bounding boxes that encompassed inflamed appendices. CT protocols were unenhanced, 5-mm slice-thickness, 512 × 512 pixel matrix. The deep learning algorithm was based on faster region convolutional neural network (Faster R-CNN). Two board-certified radiologists visually graded model predictions on the test dataset using a 5-point Likert scale (0: no detection, 1: false, 2: poor, 3: fair, 4: good), with scores ≥ 3 considered true positives. Inter-rater agreement was assessed using weighted kappa statistics. The effects of intra-abdominal fat, periappendiceal fat-stranding, presence of appendicolith, and appendix diameter on the model's recall were analyzed using binary logistic regression.

Results: The model showed a precision of 0.66 (87/132), a recall of 0.87 (87/100), and a false-positive rate per patient of 0.23 (45/200). The inter-rater agreement for Likert scores of 2-4 was κ = 0.76. The logistic regression analysis showed that only intra-abdominal fat had a significant impact on the model's precision (p = 0.02).

Conclusion: We developed a model capable of detecting appendicitis on CT with a three-dimensional bounding box.

阑尾炎的深度学习:CT三维定位模型的建立。
目的:建立腹部CT检测阑尾炎的深度学习模型并进行评价。材料与方法:本回顾性单中心研究纳入2011 - 2020年阑尾炎患者567例ct(男性330例,年龄20-96岁),随机分为训练组(n = 517)和验证组(n = 50)。验证集补充了50例急性腹部对照ct。对于测试数据集,从2021年以后的单独时期连续收集了100个阑尾炎ct和100个对照ct。排除标准包括年龄。结果:模型的准确率为0.66(87/132),召回率为0.87(87/100),每位患者的假阳性率为0.23(45/200)。Likert评分2-4的评分间一致性κ = 0.76。logistic回归分析显示,只有腹内脂肪对模型精度有显著影响(p = 0.02)。结论:建立了一种基于三维边界盒的阑尾炎CT检测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Japanese Journal of Radiology
Japanese Journal of Radiology Medicine-Radiology, Nuclear Medicine and Imaging
自引率
4.80%
发文量
133
期刊介绍: Japanese Journal of Radiology is a peer-reviewed journal, officially published by the Japan Radiological Society. The main purpose of the journal is to provide a forum for the publication of papers documenting recent advances and new developments in the field of radiology in medicine and biology. The scope of Japanese Journal of Radiology encompasses but is not restricted to diagnostic radiology, interventional radiology, radiation oncology, nuclear medicine, radiation physics, and radiation biology. Additionally, the journal covers technical and industrial innovations. The journal welcomes original articles, technical notes, review articles, pictorial essays and letters to the editor. The journal also provides announcements from the boards and the committees of the society. Membership in the Japan Radiological Society is not a prerequisite for submission. Contributions are welcomed from all parts of the world.
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