computer-aided diagnostics

  • 文章类型: Journal Article
    背景:心理肿瘤学护理已成为当代肿瘤学实践中的重要问题,鉴于其对患者心理健康的深远影响。接受头颈部或上消化道癌症治疗的患者通常会遇到复杂的情绪和心理挑战,需要专门的支持和干预。传统的心理肿瘤护理方法可能在全面评估和满足患者需求的能力方面受到限制。因此,探索创新方法,例如利用自然语言处理(NLP)元素,对于提高心理肿瘤干预的有效性至关重要。
    方法:在本研究中,我们开发了一种利用自然语言处理(NLP)元素来增强头颈部或上消化道癌症患者的心理肿瘤护理的方法.该方法旨在促进词汇,情绪,和五种基本情绪的强度分析(幸福,悲伤,愤怒,厌恶,和恐惧),以及探索潜在的困难领域,如身体形象,疼痛,还有自尊.我们进行了涉及三个治疗阶段的50名患者的研究。
    结果:我们的方法有助于识别每个治疗阶段的特征,帮助根据个体患者的需要定制适当的治疗方法。这些结果为心理学家和精神科医生提供了有价值的见解,可以加快诊断和干预。潜在影响治疗结果。此外,这些数据可以通过解决患者特有的问题为治疗决策提供信息.此外,我们的方法有望优化心理护理资源的配置,特别是在患者接触的初始阶段。
    结论:研究中的主要问题是参与者的年龄范围相当广泛,这解释了词汇的潜在多样性。
    结论:结论:我们的研究表明,将自然语言处理(NLP)元素整合到患有头颈部或上消化道癌症的患者的心理肿瘤护理中具有潜在的效用.开发的方法提供了一种新的方法来全面评估患者的情绪状态和困难领域,从而促进量身定制的干预措施和治疗计划。这些发现强调了继续研究和创新心理肿瘤学以提高患者护理和预后的重要性。
    BACKGROUND: Psycho-oncology care has emerged as a significant concern in contemporary oncology practice, given its profound impact on patient psychological well-being. Patients undergoing treatment for head-neck or upper gastrointestinal tract cancers often experience complex emotional and psychological challenges, necessitating specialized support and intervention. Traditional approaches to psycho-oncological care may be limited in their ability to comprehensively assess and address patients\' needs. Therefore, exploring innovative methodologies, such as leveraging natural language processing (NLP) elements, is crucial to enhancing the effectiveness of psycho-oncological interventions.
    METHODS: In this study, we developed a method utilizing natural language processing (NLP) elements to augment psycho-oncological care for patients with head-neck or upper gastrointestinal tract cancers. The method aimed to facilitate vocabulary, sentiment, and intensity analysis of five basic emotions (happiness, sadness, anger, disgust, and fear), as well as to explore potential areas of difficulty such as body image, pain, and self-esteem. We conducted research involving 50 patients across three treatment stages.
    RESULTS: Our method facilitated the identification of characteristic features at each treatment stage, aiding in the tailoring of appropriate therapies to individual patient needs. The results offer insights valuable to psychologists and psychiatrists for expedited diagnosis and intervention, potentially influencing therapy outcomes. Additionally, the data may inform treatment decisions by addressing patient-specific concerns. Furthermore, our method holds promise for optimizing the allocation of psychological care resources, particularly at the initial stages of patient contact.
    CONCLUSIONS: The main problem in the research was the fairly wide age range of participants, which explains the potential diversity of vocabulary.
    CONCLUSIONS: In conclusion, our study demonstrates the potential utility of integrating natural language processing (NLP) elements into psycho-oncological care for patients with head-neck or upper gastrointestinal tract cancers. The developed method offers a novel approach to comprehensively assessing patients\' emotional states and areas of difficulty, thereby facilitating tailored interventions and treatment planning. These findings underscore the importance of continued research and innovation in psycho-oncology to enhance patient care and outcomes.
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  • 文章类型: Journal Article
    数字病理学(DP)已开始在评估肝脏标本中发挥关键作用。最近的研究表明,将DP和人工智能(AI)结合起来应用于组织病理学的工作流程在支持诊断方面具有潜在价值。治疗评价,肝脏疾病的预后预测。这里,我们对该工作流程在肝病学领域的应用进行了系统评价.根据PRISMA2020标准,搜索PubMed,Scopus,进行了Embase电子数据库,应用包含/排除过滤器。这些文章由两名独立审稿人评估,提取了每项研究的规格和目标,使用的人工智能工具,以及获得的结果。从确定的266条初始记录中,选择了25项符合条件的研究,主要在人体肝脏组织上进行。大多数研究是使用全载玻片成像系统进行成像采集,并应用不同的机器学习和深度学习方法进行图像预处理,分割,特征提取,和分类。值得注意的是,与病理学家的注释相比,大多数选择的研究在肝脏组织学图像分类器方面表现良好。迄今为止,有希望的结果预示着这些技术在临床实践中的应用不会太遥远。
    Digital pathology (DP) has begun to play a key role in the evaluation of liver specimens. Recent studies have shown that a workflow that combines DP and artificial intelligence (AI) applied to histopathology has potential value in supporting the diagnosis, treatment evaluation, and prognosis prediction of liver diseases. Here, we provide a systematic review of the use of this workflow in the field of hepatology. Based on the PRISMA 2020 criteria, a search of the PubMed, SCOPUS, and Embase electronic databases was conducted, applying inclusion/exclusion filters. The articles were evaluated by two independent reviewers, who extracted the specifications and objectives of each study, the AI tools used, and the results obtained. From the 266 initial records identified, 25 eligible studies were selected, mainly conducted on human liver tissues. Most of the studies were performed using whole-slide imaging systems for imaging acquisition and applying different machine learning and deep learning methods for image pre-processing, segmentation, feature extractions, and classification. Of note, most of the studies selected demonstrated good performance as classifiers of liver histological images compared to pathologist annotations. Promising results to date bode well for the not-too-distant inclusion of these techniques in clinical practice.
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  • 文章类型: Journal Article
    默克尔细胞癌(MCC)是公认的最恶性的皮肤肿瘤之一。它的稀有性可能解释了这一领域对数字颜色研究的有限探索。这项研究的目的是描绘MCC与类似MCC的良性病变相比的颜色变化。如樱桃血管瘤和血管瘤,以及其他非黑色素瘤皮肤癌病变,如基底细胞癌(BCC)和鳞状细胞癌(SCC),利用计算机辅助数字颜色分析。这是一项回顾性研究,对11例原发性MCC患者的病变颜色和邻近正常皮肤的临床图像,11例樱桃血管瘤,12例血管瘤患者,并使用RGB(红色,绿色,和蓝色)和CIELab颜色系统。实验室颜色系统有助于估计皮肤中的个体类型学角度(ITA)变化,这些结果记录在这项研究中。已证明,颜色成分的估计可以帮助这些类型的病变的鉴别诊断,因为MCC和其他类别的皮肤病变如血管瘤之间的颜色参数存在显着差异,常见皮肤癌,和樱桃血管瘤.在MCC与樱桃血管瘤的RGB的蓝色(p=0.003)和Lab颜色的b*参数(p<0.0001)中观察到值的显著差异。同样,Merkel细胞癌(MCC)的平均a*值与基底细胞癌和鳞状细胞癌相比,差异具有统计学意义(p<0.0001)。需要更大规模的前瞻性研究来进一步验证这些发现的临床应用。
    Merkel cell carcinoma (MCC) is recognized as one of the most malignant skin tumors. Its rarity might explain the limited exploration of digital color studies in this area. The objective of this study was to delineate color alterations in MCCs compared to benign lesions resembling MCC, such as cherry angiomas and hemangiomas, along with other non-melanoma skin cancer lesions like basal cell carcinoma (BCC) and squamous cell carcinoma (SCC), utilizing computer-aided digital color analysis. This was a retrospective study where clinical images of the color of the lesion and adjacent normal skin from 11 patients with primary MCC, 11 patients with cherry angiomas, 12 patients with hemangiomas, and 12 patients with BCC/SCC (totaling 46 patients) were analyzed using the RGB (red, green, and blue) and the CIE Lab color system. The Lab color system aided in estimating the Individual Typology Angle (ITA) change in the skin, and these results are documented in this study. It was demonstrated that the estimation of color components can assist in the differential diagnosis of these types of lesions because there were significant differences in color parameters between MCC and other categories of skin lesions such as hemangiomas, common skin carcinomas, and cherry hemangiomas. Significant differences in values were observed in the blue color of RGB (p = 0.003) and the b* parameter of Lab color (p < 0.0001) of MCC versus cherry angiomas. Similarly, the mean a* value of Merkel cell carcinoma (MCC) compared to basal cell carcinoma and squamous cell carcinoma showed a statistically significant difference (p < 0.0001). Larger prospective studies are warranted to further validate the clinical application of these findings.
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  • 文章类型: Journal Article
    背景:头颈癌(H&NC)是所有癌症病例的重要组成部分。H&NC患者经历了无意的体重减轻,营养状况差,或言语障碍。医疗干预会影响外观并干扰患者对身体的自我感知。由于时间有限,心理咨询负担不起。
    方法:我们使用NLP分析基本情绪强度,关于一个人身体的感情,特征性词汇,以及免费笔记中潜在的困难领域。情绪强度研究使用使用单词嵌入开发的扩展NAWL词典。情感分析使用了一种混合方法:情感词典和深度递归网络。由心理肿瘤学家定义的词性标记和领域规则确定了不同的语言特征。使用带有单词极性的词典方法分析了潜在的困难区域,以定义给定区域并使用单词袋表示笔记。这里,我们应用了使用SVD的LSA方法来降维。共有50名需要肠内营养的癌症患者参加了这项研究。
    结果:结果证实了H&NC患者的情绪与身体形象有关的复杂性。在大多数患者中检测到对身体图像的消极态度。研究中提出的方法似乎可以有效地评估身体图像感知障碍,但它不能作为身体形象感知问题的唯一指标。
    结论:研究中的主要问题是参与者的年龄范围相当广泛,这解释了词汇的潜在多样性。
    结论:患者病情属性的组合,可能使用特定患者的方法来确定,可以指示支持患者的方向,亲戚,直接医务人员,和心理肿瘤学家。
    BACKGROUND: Head and neck cancers (H&NCs) constitute a significant part of all cancer cases. H&NC patients experience unintentional weight loss, poor nutritional status, or speech disorders. Medical interventions affect appearance and interfere with patients\' self-perception of their bodies. Psychological consultations are not affordable due to limited time.
    METHODS: We used NLP to analyze the basic emotion intensity, sentiment about one\'s body, characteristic vocabulary, and potential areas of difficulty in free notes. The emotion intensity research uses the extended NAWL dictionary developed using word embedding. The sentiment analysis used a hybrid approach: a sentiment dictionary and a deep recursive network. The part-of-speech tagging and domain rules defined by a psycho-oncologist determine the distinct language traits. Potential areas of difficulty were analyzed using the dictionaries method with word polarity to define a given area and the presentation of a note using bag-of-words. Here, we applied the LSA method using SVD to reduce dimensionality. A total of 50 cancer patients requiring enteral nutrition participated in the study.
    RESULTS: The results confirmed the complexity of emotions in patients with H&NC in relation to their body image. A negative attitude towards body image was detected in most of the patients. The method presented in the study appeared to be effective in assessing body image perception disturbances, but it cannot be used as the sole indicator of body image perception issues.
    CONCLUSIONS: The main problem in the research was the fairly wide age range of participants, which explains the potential diversity of vocabulary.
    CONCLUSIONS: The combination of the attributes of a patient\'s condition, possible to determine using the method for a specific patient, can indicate the direction of support for the patient, relatives, direct medical personnel, and psycho-oncologists.
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  • 文章类型: Journal Article
    该研究的目的是开发一种检测病理性呼吸音的方法,由支气管哮喘引起,借助机器学习技术。
    要构建和训练神经网络,我们使用了不同疾病阶段的支气管哮喘患者(n=951)和健康志愿者(n=167)的呼吸音记录。声音记录在四个点上平静的呼吸:在口腔,在气管上方,在胸部(右侧的第二肋间空间),在后面的一个点。
    为计算机辅助检测呼吸音而开发的方法可以诊断89.4%的病例中典型的支气管哮喘声音,无论性别和年龄如何,灵敏度为89.3%,特异性为86.0%。疾病的阶段,和录音的重点。
    The aim of the study is to develop a method for detection of pathological respiratory sound, caused by bronchial asthma, with the aid of machine learning techniques.
    To build and train neural networks, we used the records of respiratory sounds of bronchial asthma patients at different stages of the disease (n=951) aged from several months to 47 years old and healthy volunteers (n=167). The sounds were recorded with calm breathing at four points: at the oral cavity, above the trachea, on the chest (second intercostal space on the right side), and at a point on the back.
    The method developed for computer-aided detection of respiratory sounds allows to diagnose sounds typical for bronchial asthma in 89.4% of cases with 89.3% sensitivity and 86.0% specificity regardless of sex and age of the patients, stage of the disease, and the point of sound recording.
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  • 文章类型: Journal Article
    癌症是一种危险的,有时危及生命的疾病,可能对身体产生一些负面影响,是导致死亡的主要原因,并且变得越来越难以检测。每种癌症都有自己的特点,症状,和疗法,和早期识别和管理是重要的积极预后。医生利用各种方法来检测癌症,取决于肿瘤的种类和位置。X射线等成像测试,计算机断层扫描,磁共振成像扫描,和正电子发射断层扫描(PET)扫描,它可以提供身体内部结构的精确图片来发现任何异常,是医生用来诊断癌症的一些工具。本文评估了计算智能方法,并通过关注机器学习和深度学习模型(如K最近邻居(KNN))的相关性,提供了一种影响未来工作的方法。支持向量机(SVM)朴素贝叶斯,决策树,深度神经网络,深玻尔兹曼机,等等。它使用系统评论的首选报告项目和范围评论的荟萃分析扩展(PRISMA-ScR)评估了114项研究的信息。本文探讨了每种模型的优缺点,并概述了它们如何用于癌症诊断。总之,人工智能显示出增强癌症成像和诊断的巨大潜力,尽管有许多临床问题需要解决。
    Cancer is a dangerous and sometimes life-threatening disease that can have several negative consequences for the body, is a leading cause of mortality, and is becoming increasingly difficult to detect. Each form of cancer has its own set of traits, symptoms, and therapies, and early identification and management are important for a positive prognosis. Doctors utilize a variety of approaches to detect cancer, depending on the kind and location of the tumor. Imaging tests such as X-rays, Computed Tomography scans, Magnetic Resonance Imaging scans, and Positron Emission Tomography (PET) scans, which may provide precise pictures of the body\'s interior structures to spot any abnormalities, are some of the tools that doctors use to diagnose cancer. This article evaluates computational-intelligence approaches and provides a means to impact future work by focusing on the relevance of machine learning and deep learning models such as K Nearest Neighbour (KNN), Support Vector Machine (SVM), Naïve Bayes, Decision Tree, Deep Neural Network, Deep Boltzmann machine, and so on. It evaluates information from 114 studies using Preferred Reporting Items for Systematic Reviews and Meta-Analyses extension for Scoping Reviews (PRISMA-ScR). This article explores the advantages and disadvantages of each model and provides an outline of how they are used in cancer diagnosis. In conclusion, artificial intelligence shows significant potential to enhance cancer imaging and diagnosis, despite the fact that there are a number of clinical issues that need to be addressed.
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  • 文章类型: Journal Article
    子宫肌瘤影响70%的育龄妇女,可能会影响他们的生育能力和健康。手动电影阅读通常用于识别子宫肌瘤,但这很耗时,辛苦,和主观。临床治疗需要考虑子宫壁之间的位置关系,子宫腔,和子宫肌瘤.然而,由于它们复杂多变的形状,邻近组织或器官的低对比度,和难以区分的边缘,在MRI中准确识别它们是困难的。我们的工作通过提出一个能够自动输出位置的实例分割网络来解决这些挑战,类别,每个器官和病变的面具。具体来说,我们设计了一个新的主干,它有助于学习对象多样性的形状特征,并滤除背景噪声干扰。我们优化了锚盒生成策略,以提供更好的先验,以增强边界盒预测和回归的过程。自适应迭代细分策略确保对象的掩模边界细节更加真实和准确。我们进行了大量的实验来验证我们的网络,与最先进的实例分割模型相比,实现了更好的平均精度(AP)结果。与基线网络相比,我们的模型改进了子宫壁上的AP,子宫腔,肌瘤减少8.8%,8.4%,和3.2%,分别。我们的工作是第一个在子宫MRI中实现多类实例分割,为临床制定合适的手术方案提供了方便客观的参考,对提高诊断效率,实现子宫肌瘤的自动辅助诊断具有重要价值。
    Uterine myomas affect 70% of women of reproductive age, potentially impacting their fertility and health. Manual film reading is commonly used to identify uterine myomas, but it is time-consuming, laborious, and subjective. Clinical treatment requires the consideration of the positional relationship among the uterine wall, uterine cavity, and uterine myomas. However, due to their complex and variable shapes, the low contrast of adjacent tissues or organs, and indistinguishable edges, accurately identifying them in MRI is difficult. Our work addresses these challenges by proposing an instance segmentation network capable of automatically outputting the location, category, and masks of each organ and lesion. Specifically, we designed a new backbone that facilitates learning the shape features of object diversity, and filters out background noise interference. We optimized the anchor box generation strategy to provide better priors in order to enhance the process of bounding box prediction and regression. An adaptive iterative subdivision strategy ensures that the mask boundary details of objects are more realistic and accurate. We conducted extensive experiments to validate our network, which achieved better average precision (AP) results than those of state-of-the-art instance segmentation models. Compared to the baseline network, our model improved AP on the uterine wall, uterine cavity, and myomas by 8.8%, 8.4%, and 3.2%, respectively. Our work is the first to realize multiclass instance segmentation in uterine MRI, providing a convenient and objective reference for the clinical development of appropriate surgical plans, and has significant value in improving diagnostic efficiency and realizing the automatic auxiliary diagnosis of uterine myomas.
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  • 文章类型: Journal Article
    癌症是一个有问题的全球健康问题,在全世界死亡率极高。近年来出现在癌症诊断领域的各种机器学习技术的应用为有效和精确的治疗决策提供了有意义的见解。由于测序技术的快速发展,多年来,基于基因表达数据的癌症检测有所改善。不同类型的癌症以不同的方式影响身体的不同部位。影响口腔的癌症,唇,上喉被称为口腔癌,这是全球第六大流行的癌症。印度,孟加拉国,中国,美国,巴基斯坦是口腔疾病和唇癌发病率最高的五个国家。口腔癌的主要原因是过度使用烟草和吸烟。如果能够及早发现口腔癌(OC),可以挽救许多人的生命。早期识别和诊断可以帮助医生提供更好的患者护理和有效的治疗。OC筛选可以随着人工智能(AI)技术的实施而推进。AI可以通过准确分析来自多种成像模式的大型数据集来为肿瘤学部门提供帮助。这篇综述涉及在癌症早期阶段实施AI以正确检测和治疗OC。此外,已经对几种DL和ML模型进行了性能评估,以表明DL模型可以克服与口腔早期癌性病变相关的困难挑战。对于这篇评论,我们遵循了推荐的扩展范围审查和荟萃分析(PRISMA-ScR)的规则.检查所选文章的参考列表有助于我们收集有关该主题的更多详细信息。此外,我们讨论了人工智能的缺点及其在口腔癌研究中的潜在用途。有减少风险因素的方法,例如减少烟草和酒精的使用,以及针对HPV感染的免疫接种以避免口腔癌,或者减轻疾病的负担。此外,预防口腔疾病的方法包括对医生和患者的培训计划,以及通过筛查该疾病的高风险人群来促进早期诊断。
    Cancer is a problematic global health issue with an extremely high fatality rate throughout the world. The application of various machine learning techniques that have appeared in the field of cancer diagnosis in recent years has provided meaningful insights into efficient and precise treatment decision-making. Due to rapid advancements in sequencing technologies, the detection of cancer based on gene expression data has improved over the years. Different types of cancer affect different parts of the body in different ways. Cancer that affects the mouth, lip, and upper throat is known as oral cancer, which is the sixth most prevalent form of cancer worldwide. India, Bangladesh, China, the United States, and Pakistan are the top five countries with the highest rates of oral cavity disease and lip cancer. The major causes of oral cancer are excessive use of tobacco and cigarette smoking. Many people\'s lives can be saved if oral cancer (OC) can be detected early. Early identification and diagnosis could assist doctors in providing better patient care and effective treatment. OC screening may advance with the implementation of artificial intelligence (AI) techniques. AI can provide assistance to the oncology sector by accurately analyzing a large dataset from several imaging modalities. This review deals with the implementation of AI during the early stages of cancer for the proper detection and treatment of OC. Furthermore, performance evaluations of several DL and ML models have been carried out to show that the DL model can overcome the difficult challenges associated with early cancerous lesions in the mouth. For this review, we have followed the rules recommended for the extension of scoping reviews and meta-analyses (PRISMA-ScR). Examining the reference lists for the chosen articles helped us gather more details on the subject. Additionally, we discussed AI\'s drawbacks and its potential use in research on oral cancer. There are methods for reducing risk factors, such as reducing the use of tobacco and alcohol, as well as immunization against HPV infection to avoid oral cancer, or to lessen the burden of the disease. Additionally, officious methods for preventing oral diseases include training programs for doctors and patients as well as facilitating early diagnosis via screening high-risk populations for the disease.
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  • 文章类型: Systematic Review
    利用机器学习对脑肿瘤分类进行研究综述,用文献计量分析进行了系统综述,这是在这里报道的。本研究基于1747篇关于使用机器学习自动检测脑肿瘤的文献计量分析,进行了系统综述。在过去5年(2019-2023年)发表了679个不同的来源,由6632名学者撰写。从Scopus数据库收集书目数据,并基于R平台使用Biblioshiny进行全面的文献计量分析。最具生产力和协作性的机构,文件,期刊和国家是根据引文分析揭示的。此外,研究所提出了各种合作指标,国家和作者级别。根据作者的表现对Lotka定律进行了测试。分析表明,作者的出版趋势遵循Lotka的平方反比定律。年度出版物分析显示,2022年发表的论文占36.46%,与往年相比稳步增长。大多数引用的作者专注于多类别分类以及新颖的卷积神经网络(CNN)模型,这些模型对小型训练集有效。关键词分析表明,深度学习,MRI,核磁共振,胶质瘤出现的次数最多,证明在几种脑肿瘤类型中,大多数研究集中在胶质瘤上。印度,就作者和研究机构而言,中国和美国是合作程度最高的国家之一。多伦多大学,哈佛医学院的附属机构数量最多,分别有132和87种出版物。
    To develop a research overview of brain tumor classification using machine learning, we conducted a systematic review with a bibliometric analysis. Our systematic review and bibliometric analysis included 1747 studies of automated brain tumor detection using machine learning reported in the previous 5 years (2019-2023) from 679 different sources and authored by 6632 investigators. Bibliographic data were collected from the Scopus database, and a comprehensive bibliometric analysis was conducted using Biblioshiny and the R platform. The most productive and collaborative institutes, reports, journals, and countries were determined using citation analysis. In addition, various collaboration metrics were determined at the institute, country, and author level. Lotka\'s law was tested using the authors\' performance. Analysis showed that the authors\' publication trends followed Lotka\'s inverse square law. An annual publication analysis showed that 36.46% of the studies had been reported in 2022, with steady growth from previous years. Most of the cited authors had focused on multiclass classification and novel convolutional neural network models that are efficient for small training sets. A keyword analysis showed that \"deep learning,\" \"magnetic resonance imaging,\" \"nuclear magnetic resonance imaging,\" and \"glioma\" appeared most often, proving that of the several brain tumor types, most studies had focused on glioma. India, China, and the United States were among the highest collaborative countries in terms of both authors and institutes. The University of Toronto and Harvard Medical School had the highest number of affiliations with 132 and 87 publications, respectively.
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  • 文章类型: Journal Article
    皮肤癌仍然是全球主要的医疗保健问题之一。如果早期诊断,皮肤癌可以成功治疗。虽然早期诊断对于有效治愈癌症至关重要,目前的过程需要皮肤癌专家的参与,这使它成为一种昂贵的程序,在发展中国家不容易获得和负担得起。皮肤癌专家的缺乏引起了开发自动诊断系统的需求。在这种情况下,已经提出了基于人工智能(AI)的方法。这些系统可以帮助早期发现皮肤癌,从而降低其发病率。and,反过来,减轻与之相关的死亡率。机器学习和深度学习是人工智能的分支,处理统计建模和推理,它们逐步从输入到它们的数据中学习,以预测预期的目标和特征。本调查重点关注皮肤癌诊断领域的机器学习和深度学习技术。同时保持两种技术之间的平衡。对广泛使用的数据集和流行的评论论文进行了比较,讨论自动皮肤癌诊断。该研究还讨论了先前作品的见解和教训。调查最终确定了未来的方向和范围,这将有助于解决自动化皮肤癌诊断中面临的挑战。
    Skin cancer continues to remain one of the major healthcare issues across the globe. If diagnosed early, skin cancer can be treated successfully. While early diagnosis is paramount for an effective cure for cancer, the current process requires the involvement of skin cancer specialists, which makes it an expensive procedure and not easily available and affordable in developing countries. This dearth of skin cancer specialists has given rise to the need to develop automated diagnosis systems. In this context, Artificial Intelligence (AI)-based methods have been proposed. These systems can assist in the early detection of skin cancer and can consequently lower its morbidity, and, in turn, alleviate the mortality rate associated with it. Machine learning and deep learning are branches of AI that deal with statistical modeling and inference, which progressively learn from data fed into them to predict desired objectives and characteristics. This survey focuses on Machine Learning and Deep Learning techniques deployed in the field of skin cancer diagnosis, while maintaining a balance between both techniques. A comparison is made to widely used datasets and prevalent review papers, discussing automated skin cancer diagnosis. The study also discusses the insights and lessons yielded by the prior works. The survey culminates with future direction and scope, which will subsequently help in addressing the challenges faced within automated skin cancer diagnosis.
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