Diagnosing Skin Lesion Using Multi-Modal Analysis

Rahul Nijhawan, Devansh Bhatnagar, Sudipta Roy
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Abstract

The vast expansion of modalities in the medical field has helped identify and cure many diseases. Each modality has its specific characteristic feature. Multi-modal data analysis fuses different characteristic features and generates helpful information. With recent advances, deep learning has gain much importance in analyzing medical images. Generally, in the medical field, images are used for extracting features. Multi-modal image analysis uses deep learning models. The knowledge of the patient history and laboratory data helps create a simple clinical context. Combining information about the patient history and distinct modalities can be effective in obtaining an accurate diagnosis. The proposed model performs reasonably better than the other deep learning models, taking the image as input and additional helpful information about the patient. We have used the PAD-UFES-20 dataset for this study.
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多模态分析诊断皮肤病变
医学领域模式的广泛扩展有助于识别和治疗许多疾病。每种形态都有其特定的特征。多模态数据分析融合了不同的特征特征,生成有用的信息。随着近年来的进展,深度学习在医学图像分析中变得越来越重要。在医学领域,通常使用图像来提取特征。多模态图像分析使用深度学习模型。患者病史和实验室数据的知识有助于创建一个简单的临床环境。结合患者病史和不同模式的信息可以有效地获得准确的诊断。所提出的模型比其他深度学习模型表现得更好,将图像作为输入和关于患者的额外有用信息。我们在本研究中使用了pad - upes -20数据集。
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