{"title":"用于 X 射线图像分析的某些卷积神经网络架构在骨骨折检测和识别中的比较研究","authors":"Mashrur Kabir, Tasnia Jasim Tahiti, Tasnim Ahsan Prome","doi":"10.1109/ACDSA59508.2024.10468017","DOIUrl":null,"url":null,"abstract":"This research systematically evaluates the performance of diverse Convolutional Neural Network (CNN) architectures in enhancing the accuracy of bone fracture detection in medical imaging. The study aims to understand the intricate nuances exhibited by CNNs when analyzing X-ray images, high-lighting the significance of a robust framework with high sensitivity and specificity. To address the issue of imbalanced datasets, a carefully preprocessed, normalized, and augmented dataset from multiple medical institutions is utilized. The implementation of CNN architectures, such as ResNet, VGGNet, and InceptionNet, involves meticulous configuration and hyperparameter tuning to optimize feature extraction in this complex problem domain. Through extensive experimentation and thorough examination of metrics including accuracy, F1 score, sensitivity, and specificity, the efficacy of each architecture in identifying fractures and distinguishing them from benign anomalies in X-ray images is uncovered. The analysis provides a comprehensive understanding of the strengths and limitations of each architecture, enabling well-informed decisions regarding their suitability in clinical settings. This research represents a significant advancement in the field of bone fracture detection in medical imaging, offering valuable insights into the transformative potential of CNN architectures in improving diagnostic accuracy and informing clinical decision-making.","PeriodicalId":518964,"journal":{"name":"2024 International Conference on Artificial Intelligence, Computer, Data Sciences and Applications (ACDSA)","volume":"541 ","pages":"1-8"},"PeriodicalIF":0.0000,"publicationDate":"2024-02-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"A Comparative Study of Certain Convolutional Neural Network Architectures for X-ray Image Analysis in Bone Fracture Detection and Identification\",\"authors\":\"Mashrur Kabir, Tasnia Jasim Tahiti, Tasnim Ahsan Prome\",\"doi\":\"10.1109/ACDSA59508.2024.10468017\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"This research systematically evaluates the performance of diverse Convolutional Neural Network (CNN) architectures in enhancing the accuracy of bone fracture detection in medical imaging. The study aims to understand the intricate nuances exhibited by CNNs when analyzing X-ray images, high-lighting the significance of a robust framework with high sensitivity and specificity. To address the issue of imbalanced datasets, a carefully preprocessed, normalized, and augmented dataset from multiple medical institutions is utilized. The implementation of CNN architectures, such as ResNet, VGGNet, and InceptionNet, involves meticulous configuration and hyperparameter tuning to optimize feature extraction in this complex problem domain. Through extensive experimentation and thorough examination of metrics including accuracy, F1 score, sensitivity, and specificity, the efficacy of each architecture in identifying fractures and distinguishing them from benign anomalies in X-ray images is uncovered. The analysis provides a comprehensive understanding of the strengths and limitations of each architecture, enabling well-informed decisions regarding their suitability in clinical settings. 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引用次数: 0
摘要
这项研究系统地评估了各种卷积神经网络(CNN)架构在提高医学成像中骨折检测准确性方面的性能。研究旨在了解 CNN 在分析 X 射线图像时表现出的复杂细微差别,从而突出具有高灵敏度和高特异性的稳健框架的重要性。为了解决不平衡数据集的问题,我们利用了来自多个医疗机构的经过精心预处理、规范化和增强的数据集。CNN 体系结构(如 ResNet、VGGNet 和 InceptionNet)的实现涉及细致的配置和超参数调整,以优化这一复杂问题领域的特征提取。通过广泛的实验和对准确度、F1 分数、灵敏度和特异性等指标的深入研究,揭示了每种架构在识别骨折并将其与 X 光图像中的良性异常区分开来方面的功效。通过分析,我们可以全面了解每种结构的优势和局限性,从而就其在临床环境中的适用性做出明智的决定。这项研究标志着医学成像中骨折检测领域的重大进展,为了解 CNN 架构在提高诊断准确性和为临床决策提供信息方面的变革潜力提供了宝贵的见解。
A Comparative Study of Certain Convolutional Neural Network Architectures for X-ray Image Analysis in Bone Fracture Detection and Identification
This research systematically evaluates the performance of diverse Convolutional Neural Network (CNN) architectures in enhancing the accuracy of bone fracture detection in medical imaging. The study aims to understand the intricate nuances exhibited by CNNs when analyzing X-ray images, high-lighting the significance of a robust framework with high sensitivity and specificity. To address the issue of imbalanced datasets, a carefully preprocessed, normalized, and augmented dataset from multiple medical institutions is utilized. The implementation of CNN architectures, such as ResNet, VGGNet, and InceptionNet, involves meticulous configuration and hyperparameter tuning to optimize feature extraction in this complex problem domain. Through extensive experimentation and thorough examination of metrics including accuracy, F1 score, sensitivity, and specificity, the efficacy of each architecture in identifying fractures and distinguishing them from benign anomalies in X-ray images is uncovered. The analysis provides a comprehensive understanding of the strengths and limitations of each architecture, enabling well-informed decisions regarding their suitability in clinical settings. This research represents a significant advancement in the field of bone fracture detection in medical imaging, offering valuable insights into the transformative potential of CNN architectures in improving diagnostic accuracy and informing clinical decision-making.