通过计算方法对皮肤恶性肿瘤进行分类

Jahnavi Raghava Singh, J. Gopi, ,V.Anil Santosh, Ddd Suri Babu
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引用次数: 0

摘要

本研究开发了一种机器学习模型,利用卷积神经网络(CNN)进行图像处理,对不同类型的癌症进行分类。其核心目标是达到与皮肤科医生相当的性能水平。该模型在大量医学图像数据集上进行训练,使其能够学习和识别表明不同癌症类型的各种特征。利用 CNN 的强大功能,该模型可以有效地处理这些图像,识别出肉眼难以发现的微妙模式和特征。训练过程包括向 CNN 输入标记图像,使其能够高精度地区分良性和恶性病例。通过严格的测试,该模型在灵敏度和特异性方面的能力与经验丰富的皮肤科医生不相上下。这种等效的性能尤为重要,因为它凸显了该模型在临床环境中的辅助潜力,可提供可靠的第二意见并改进诊断工作流程。此外,还开发了一个用户界面,允许训练有素的 CNN 模型对输入图像进行分析。该界面不仅能显示模型的预测结果,还能提供基本指标,如置信度分数和概率分布。这些指标为了解模型的决策过程提供了宝贵的信息,有助于临床医生理解和信任人工智能的评估结果。总之,研究结果表明,卷积神经网络在改善癌症诊断方面大有可为。该模型在分类任务中的高性能证明了它作为支持皮肤科医生临床实践的工具的可行性。通过减少诊断错误和加快鉴定过程,这项技术有可能对患者的治疗效果产生重大影响,并推动医学成像和诊断领域的发展。关键词:卷积神经网络卷积神经网络(CNN);癌症分类;医学图像处理;皮肤病学人工智能;诊断准确性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Categorizing Dermatological Malignancies Via Computational Methods
In this study, a machine learning model is developed to classify different types of cancer using convolutional neural networks (CNNs) for image processing. The core objective is to achieve a performance level comparable to that of dermatologists. The model is trained on a substantial dataset of medical images, enabling it to learn and recognize various characteristics indicative of different cancer types. By leveraging the power of CNNs, the model can process these images effectively, identifying subtle patterns and features that are often challenging to detect with the naked eye. The training process involves feeding the CNN with labelled images, enabling it to differentiate between benign and malignant cases with high accuracy. Through rigorous testing, the model demonstrates competence on par with experienced dermatologists, both in terms of sensitivity and specificity. This equivalence in performance is particularly significant as it underscores the model's potential to aid in clinical settings, providing reliable second opinions and enhancing diagnostic workflows. A user interface is also developed to allow input images to be analysed by the trained CNN model. This interface not only displays the model’s predictions but also provides essential metrics such as confidence scores and probability distributions. These metrics offer valuable insights into the model's decision-making process, aiding clinicians in understanding and trusting the AI's assessments. Overall, the findings suggest that convolutional neural networks hold substantial promise for improving cancer diagnosis. The model's high performance in classification tasks demonstrates its viability as a tool for supporting dermatologists in clinical practice. By reducing diagnostic errors and accelerating the identification process, this technology has the potential to significantly impact patient outcomes and advance the field of medical imaging and diagnostics. Keywords: Convolutional Neural Networks (CNNs); Cancer Classification; Medical Image Processing; Dermatology AI; Diagnostic Accuracy
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