改变皮肤癌诊断:利用 Ham10000 数据集的深度学习方法。

IF 1.8 4区 医学 Q3 ONCOLOGY Cancer Investigation Pub Date : 2024-11-01 Epub Date: 2024-11-10 DOI:10.1080/07357907.2024.2422602
Priyeshkumar A T, Shyamala G, Vasanth T, Ponniyin Selvan V
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引用次数: 0

摘要

皮肤癌(SC)是全球最常见的三大癌症之一。在所有皮肤癌中,黑色素瘤扩散到身体其他部位的可能性最大。要有效治疗皮肤癌,早期发现至关重要。由于肿瘤和非肿瘤之间的高度相似性,即使是经验丰富的医生也很难对 SC 进行诊断。为了解决这个问题,作者开发了一种新型深度学习(DL)系统,能够自动将皮肤病变分为七组:光化性角化病(AKIEC)、黑色素瘤(MEL)、良性角化病(BKL)、黑素细胞痣(NV)、基底细胞癌(BCC)、皮纤维瘤(DF)和血管性病变(VASC)。作者引入了多粒度增强深层级联森林(Mg-EDCF)作为新型 DL 模型。在该模型中,首先,研究人员利用子采样多粒度扫描(Mg-sc)获取微特征。其次,作者采用了两种类型的随机森林(RF)来创建输入特征。最后,利用增强型深度级联森林(EDCF)进行分类。HAM10000 数据集用于实施、训练和评估所提出的模型和迁移学习(TL)模型,如 ResNet、AlexNet 和 VGG16。在验证和训练阶段,通过比较四个网络的准确率和损失来评估其性能。所提出的方法以 98.19% 的平均准确率超过了其他竞争模型。我们提出的方法与最近发表的现有最先进算法进行了验证,结果准确率一直高于分类器。
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Transforming Skin Cancer Diagnosis: A Deep Learning Approach with the Ham10000 Dataset.

Skin cancer (SC) is one of the three most common cancers worldwide. Melanoma has the deadliest potential to spread to other parts of the body among all SCs. For SC treatments to be effective, early detection is essential. The high degree of similarity between tumor and non-tumors makes SC diagnosis difficult even for experienced doctors. To address this issue, authors have developed a novel Deep Learning (DL) system capable of automatically classifying skin lesions into seven groups: actinic keratosis (AKIEC), melanoma (MEL), benign keratosis (BKL), melanocytic Nevi (NV), basal cell carcinoma (BCC), dermatofibroma (DF), and vascular (VASC) skin lesions. Authors introduced the Multi-Grained Enhanced Deep Cascaded Forest (Mg-EDCF) as a novel DL model. In this model, first, researchers utilized subsampled multigrained scanning (Mg-sc) to acquire micro features. Second, authors employed two types of Random Forest (RF) to create input features. Finally, the Enhanced Deep Cascaded Forest (EDCF) was utilized for classification. The HAM10000 dataset was used for implementing, training, and evaluating the proposed and Transfer Learning (TL) models such as ResNet, AlexNet, and VGG16. During the validation and training stages, the performance of the four networks was evaluated by comparing their accuracy and loss. The proposed method outperformed the competing models with an average accuracy score of 98.19%. Our proposed methodology was validated against existing state-of-the-art algorithms from recent publications, resulting in consistently greater accuracies than those of the classifiers.

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来源期刊
Cancer Investigation
Cancer Investigation 医学-肿瘤学
CiteScore
3.80
自引率
4.20%
发文量
71
审稿时长
8.5 months
期刊介绍: Cancer Investigation is one of the most highly regarded and recognized journals in the field of basic and clinical oncology. It is designed to give physicians a comprehensive resource on the current state of progress in the cancer field as well as a broad background of reliable information necessary for effective decision making. In addition to presenting original papers of fundamental significance, it also publishes reviews, essays, specialized presentations of controversies, considerations of new technologies and their applications to specific laboratory problems, discussions of public issues, miniseries on major topics, new and experimental drugs and therapies, and an innovative letters to the editor section. One of the unique features of the journal is its departmentalized editorial sections reporting on more than 30 subject categories covering the broad spectrum of specialized areas that together comprise the field of oncology. Edited by leading physicians and research scientists, these sections make Cancer Investigation the prime resource for clinicians seeking to make sense of the sometimes-overwhelming amount of information available throughout the field. In addition to its peer-reviewed clinical research, the journal also features translational studies that bridge the gap between the laboratory and the clinic.
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