Enhancing skin lesion classification with advanced deep learning ensemble models: a path towards accurate medical diagnostics

IF 2.5 4区 医学 Q3 ONCOLOGY
Kavitha Munuswamy Selvaraj , Sumathy Gnanagurusubbiah , Reena Roy Roby Roy , Jasmine Hephzipah John peter , Sarala Balu
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Abstract

Skin cancer, including the highly lethal malignant melanoma, poses a significant global health challenge with a rising incidence rate. Early detection plays a pivotal role in improving survival rates. This study aims to develop an advanced deep learning-based approach for accurate skin lesion classification, addressing challenges such as limited data availability, class imbalance, and noise. Modern deep neural network designs, such as ResNeXt101, SeResNeXt101, ResNet152V2, DenseNet201, GoogLeNet, and Xception, which are used in the study and ze optimised using the SGD technique. The dataset comprises diverse skin lesion images from the HAM10000 and ISIC datasets. Noise and artifacts are tackled using image inpainting, and data augmentation techniques enhance training sample diversity. The ensemble technique is utilized, creating both average and weighted average ensemble models. Grid search optimizes model weight distribution. The individual models exhibit varying performance, with metrics including recall, precision, F1 score, and MCC. The "Average ensemble model" achieves harmonious balance, emphasizing precision, F1 score, and recall, yielding high performance. The "Weighted ensemble model" capitalizes on individual models' strengths, showcasing heightened precision and MCC, yielding outstanding performance. The ensemble models consistently outperform individual models, with the average ensemble model attaining a macro-average ROC-AUC score of 96 % and the weighted ensemble model achieving a macro-average ROC-AUC score of 97 %. This research demonstrates the efficacy of ensemble techniques in significantly improving skin lesion classification accuracy. By harnessing the strengths of individual models and addressing their limitations, the ensemble models exhibit robust and reliable performance across various metrics. The findings underscore the potential of ensemble techniques in enhancing medical diagnostics and contributing to improved patient outcomes in skin lesion diagnosis.

利用先进的深度学习集合模型加强皮肤病变分类:通往精确医疗诊断之路。
皮肤癌,包括致死率极高的恶性黑色素瘤,是全球健康面临的重大挑战,发病率不断上升。早期检测在提高生存率方面发挥着关键作用。本研究旨在开发一种基于深度学习的先进方法,用于准确的皮肤病变分类,以应对数据可用性有限、类不平衡和噪声等挑战。研究中使用了现代深度神经网络设计,如 ResNeXt101、SeResNeXt101、ResNet152V2、DenseNet201、GoogLeNet 和 Xception,并使用 SGD 技术对其进行了优化。数据集包括来自 HAM10000 和 ISIC 数据集的各种皮损图像。利用图像内绘技术解决了噪声和伪影问题,数据增强技术提高了训练样本的多样性。利用集合技术创建平均集合模型和加权平均集合模型。网格搜索优化了模型权重分布。各个模型表现出不同的性能,指标包括召回率、精确度、F1 分数和 MCC。平均集合模型 "实现了和谐的平衡,强调了精确度、F1 分数和召回率,从而获得了较高的性能。加权集合模型 "充分利用了单个模型的优势,提高了精确度和 MCC,表现出色。集合模型的性能始终优于单个模型,平均集合模型的宏观平均 ROC-AUC 得分为 96%,加权集合模型的宏观平均 ROC-AUC 得分为 97%。这项研究证明了集合技术在显著提高皮损分类准确性方面的功效。通过利用单个模型的优势并解决其局限性,集合模型在各种指标上都表现出稳健可靠的性能。研究结果凸显了集合技术在提高医疗诊断方面的潜力,并有助于改善皮肤病变诊断中的患者治疗效果。
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来源期刊
Current Problems in Cancer
Current Problems in Cancer 医学-肿瘤学
CiteScore
5.10
自引率
0.00%
发文量
71
审稿时长
15 days
期刊介绍: Current Problems in Cancer seeks to promote and disseminate innovative, transformative, and impactful data on patient-oriented cancer research and clinical care. Specifically, the journal''s scope is focused on reporting the results of well-designed cancer studies that influence/alter practice or identify new directions in clinical cancer research. These studies can include novel therapeutic approaches, new strategies for early diagnosis, cancer clinical trials, and supportive care, among others. Papers that focus solely on laboratory-based or basic science research are discouraged. The journal''s format also allows, on occasion, for a multi-faceted overview of a single topic via a curated selection of review articles, while also offering articles that present dynamic material that influences the oncology field.
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