GastroVRG: Enhancing early screening in gastrointestinal health via advanced transfer features

Mohammad Shariful Islam , Mohammad Abu Tareq Rony , Tipu Sultan
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Abstract

The accurate classification of endoscopic images is a challenging yet critical task in medical diagnostics, which directly affects the treatment and management of Gastrointestinal diseases. Misclassification can lead to incorrect treatment plans, adversely affecting patient outcomes. To address this challenge, our research aimed to develop a reliable computational model to improve the accuracy of classifying conditions of esophagitis and polyps. We focused on a subset of the Kvasir v1 secondary dataset, comprising 2000 endoscopic images evenly distributed across two classes: esophagitis and polyp. The goal was to leverage the strengths of both Machine Learning(ML) and Deep Learning(DL) to create a model that not only predicts with high accuracy but also integrates seamlessly into clinical workflows. To this end, we introduced a novel VRG-based ensemble image feature extraction technique, combining the powers of VGG, RF, and GB models to synthesize a robust feature set conducive to high-precision classification. The ensemble approach demonstrated a best-in-class performance with the GB model achieving an outstanding 99.73% accuracy in detecting esophagitis and polyps. The practical implications of these results are substantial, indicating that our method can significantly improve diagnostic accuracy in real-world settings, reduce the rate of misdiagnosis, and contribute to the efficient and effective treatment of patients, ultimately enhancing the quality of healthcare services. With the successful application of our proposed method to a controlled dataset, future work involves deploying the model in clinical environments and expanding its application to a broader spectrum of Gastrointestinal conditions across multi-class datasets.

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GastroVRG:通过先进的传输功能加强胃肠道健康的早期筛查
内窥镜图像的准确分类是医学诊断中一项具有挑战性但又至关重要的任务,它直接影响到胃肠道疾病的治疗和管理。分类错误会导致错误的治疗方案,对患者的治疗效果产生不利影响。为了应对这一挑战,我们的研究旨在开发一种可靠的计算模型,以提高食管炎和息肉病症分类的准确性。我们重点研究了 Kvasir v1 二次数据集的一个子集,该数据集由 2000 张内窥镜图像组成,均匀分布在食管炎和息肉两个类别中。我们的目标是利用机器学习(ML)和深度学习(DL)的优势,创建一个不仅能高精度预测,而且能无缝集成到临床工作流程中的模型。为此,我们引入了一种新颖的基于 VRG 的集合图像特征提取技术,该技术结合了 VRG、RF 和 GB 模型的力量,合成了一个有利于高精度分类的强大特征集。该集合方法表现出同类最佳的性能,其中 GB 模型在检测食管炎和息肉方面的准确率高达 99.73%。这些结果具有重大的实际意义,表明我们的方法可以显著提高实际环境中的诊断准确率,降低误诊率,并有助于高效和有效地治疗患者,最终提高医疗服务质量。随着我们提出的方法在受控数据集上的成功应用,未来的工作将包括在临床环境中部署该模型,并将其应用扩展到多类数据集上更广泛的胃肠道疾病。
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