keyword
https://read.qxmd.com/read/37703714/artificial-intelligence-assisted-dermatology-diagnosis-from-unimodal-to-multimodal
#21
REVIEW
Nan Luo, Xiaojing Zhong, Luxin Su, Zilin Cheng, Wenyi Ma, Pingsheng Hao
Artificial Intelligence (AI) is progressively permeating medicine, notably in the realm of assisted diagnosis. However, the traditional unimodal AI models, reliant on large volumes of accurately labeled data and single data type usage, prove insufficient to assist dermatological diagnosis. Augmenting these models with text data from patient narratives, laboratory reports, and image data from skin lesions, dermoscopy, and pathologies could significantly enhance their diagnostic capacity. Large-scale pre-training multimodal models offer a promising solution, exploiting the burgeoning reservoir of clinical data and amalgamating various data types...
September 1, 2023: Computers in Biology and Medicine
https://read.qxmd.com/read/37632937/experiences-regarding-use-and-implementation-of-artificial-intelligence-supported-follow-up-of-atypical-moles-at-a-dermatological-outpatient-clinic-qualitative-study
#22
JOURNAL ARTICLE
Elisabeth Rygvold Haugsten, Tine Vestergaard, Bettina Trettin
BACKGROUND: Artificial intelligence (AI) is increasingly used in numerous medical fields. In dermatology, AI can be used in the form of computer-assisted diagnosis (CAD) systems when assessing and diagnosing skin lesions suspicious of melanoma, a potentially lethal skin cancer with rising incidence all over the world. In particular, CAD may be a valuable tool in the follow-up of patients with high risk of developing melanoma, such as patients with multiple atypical moles. One such CAD system, ATBM Master (FotoFinder), can execute total body dermoscopy (TBD)...
June 23, 2023: JMIR dermatology
https://read.qxmd.com/read/37596573/devo-an-ontology-to-assist-with-dermoscopic-feature-standardization
#23
JOURNAL ARTICLE
Xinyuan Zhang, Rebecca Z Lin, Muhammad Tuan Amith, Cynthia Wang, Jeremy Light, John Strickley, Cui Tao
BACKGROUND: The utilization of dermoscopic analysis is becoming increasingly critical for diagnosing skin diseases by physicians and even artificial intelligence. With the expansion of dermoscopy, its vocabulary has proliferated, but the rapid evolution of the vocabulary of dermoscopy without standardized control is counterproductive. We aimed to develop a domain-specific ontology to formally represent knowledge for certain dermoscopic features. METHODS: The first phase involved creating a fundamental-level ontology that covers the fundamental aspects and elements in describing visualizations, such as shapes and colors...
August 18, 2023: BMC Medical Informatics and Decision Making
https://read.qxmd.com/read/37534916/dermatologist-versus-artificial-intelligence-confidence-in-dermoscopy-diagnosis-complementary-information-that-may-affect-decision-making
#24
JOURNAL ARTICLE
Pieter Van Molle, Sofie Mylle, Tim Verbelen, Cedric De Boom, Bert Vankeirsbilck, Evelien Verhaeghe, Bart Dhoedt, Lieve Brochez
In dermatology, deep learning may be applied for skin lesion classification. However, for a given input image, a neural network only outputs a label, obtained using the class probabilities, which do not model uncertainty. Our group developed a novel method to quantify uncertainty in stochastic neural networks. In this study, we aimed to train such network for skin lesion classification and evaluate its diagnostic performance and uncertainty, and compare the results to the assessments by a group of dermatologists...
August 3, 2023: Experimental Dermatology
https://read.qxmd.com/read/37529760/identifying-the-role-of-vision-transformer-for-skin-cancer-a-scoping-review
#25
Sulaiman Khan, Hazrat Ali, Zubair Shah
INTRODUCTION: Detecting and accurately diagnosing early melanocytic lesions is challenging due to extensive intra- and inter-observer variabilities. Dermoscopy images are widely used to identify and study skin cancer, but the blurred boundaries between lesions and besieging tissues can lead to incorrect identification. Artificial Intelligence (AI) models, including vision transformers, have been proposed as a solution, but variations in symptoms and underlying effects hinder their performance...
2023: Frontiers in artificial intelligence
https://read.qxmd.com/read/37438476/prospective-validation-of-dermoscopy-based-open-source-artificial-intelligence-for-melanoma-diagnosis-prove-ai-study
#26
JOURNAL ARTICLE
Michael A Marchetti, Emily A Cowen, Nicholas R Kurtansky, Jochen Weber, Megan Dauscher, Jennifer DeFazio, Liang Deng, Stephen W Dusza, Helen Haliasos, Allan C Halpern, Sharif Hosein, Zaeem H Nazir, Ashfaq A Marghoob, Elizabeth A Quigley, Trina Salvador, Veronica M Rotemberg
The use of artificial intelligence (AI) has the potential to improve the assessment of lesions suspicious of melanoma, but few clinical studies have been conducted. We validated the accuracy of an open-source, non-commercial AI algorithm for melanoma diagnosis and assessed its potential impact on dermatologist decision-making. We conducted a prospective, observational clinical study to assess the diagnostic accuracy of the AI algorithm (ADAE) in predicting melanoma from dermoscopy skin lesion images. The primary aim was to assess the reliability of ADAE's sensitivity at a predefined threshold of 95%...
July 12, 2023: NPJ Digital Medicine
https://read.qxmd.com/read/37278496/line-field-confocal-optical-coherence-tomography-in-melanocytic-and-non-melanocytic-skin-tumors
#27
REVIEW
Mariano Suppa, Gerardo Palmisano, Linda Tognetti, Clement Lenoir, Simone Cappilli, Margot Fontaine, Carmen Orte Cano, Gwendoline Diet, Javiera Perez-Anker, Sandra Schuh, Alessandro DI Stefani, Francesco Lacarrubba, Susana Puig, Josep Malvehy, Pietro Rubegni, Julia Welzel, Jean-Luc Perrot, Ketty Peris, Elisa Cinotti, Veronique Del Marmol
INTRODUCTION: Line-field confocal optical coherence tomography (LC-OCT) is a recently introduced, non-invasive skin imaging technique combining the technical advantages of reflectance confocal microscopy and conventional OCT in terms of isotropic resolution and in-tissue penetration. Several studies have been published so far about the use of LC-OCT in melanocytic and non-melanocytic skin tumors. The aim of this review was to summarize the currently available data on the use of LC-OCT for benign and malignant melanocytic and non-melanocytic skin tumors...
June 2023: Italian journal of dermatology and venereology
https://read.qxmd.com/read/37238299/diagnosing-melanomas-in-dermoscopy-images-using-deep-learning
#28
JOURNAL ARTICLE
Ghadah Alwakid, Walaa Gouda, Mamoona Humayun, N Z Jhanjhi
When it comes to skin tumors and cancers, melanoma ranks among the most prevalent and deadly. With the advancement of deep learning and computer vision, it is now possible to quickly and accurately determine whether or not a patient has malignancy. This is significant since a prompt identification greatly decreases the likelihood of a fatal outcome. Artificial intelligence has the potential to improve healthcare in many ways, including melanoma diagnosis. In a nutshell, this research employed an Inception-V3 and InceptionResnet-V2 strategy for melanoma recognition...
May 22, 2023: Diagnostics
https://read.qxmd.com/read/37021858/smart-low-level-laser-therapy-system-for-automatic-facial-dermatological-disorder-diagnosis
#29
JOURNAL ARTICLE
Duc Tri Phan, Quoc Bao Ta, Cao Duong Ly, Cong Hoan Nguyen, Sumin Park, Jaeyeop Choi, Se Hwi O, Junghwan Oh
Computer-aided diagnosis using dermoscopy images is a promising technique for improving the efficiency of facial skin disorder diagnosis and treatment. Hence, in this study, we propose a low-level laser therapy (LLLT) system with a deep neural network and medical internet of things (MIoT) assistance. The main contributions of this study are to (1) provide a comprehensive hardware and software design for an automatic phototherapy system, (2) propose a modified-U2 Net deep learning model for facial dermatological disorder segmentation, and (3) develop a synthetic data generation process for the proposed models to address the issue of the limited and imbalanced dataset...
January 18, 2023: IEEE Journal of Biomedical and Health Informatics
https://read.qxmd.com/read/37000340/recent-advances-in-melanoma-diagnosis-and-prognosis-using-machine-learning-methods
#30
REVIEW
Sarah Grossarth, Dominique Mosley, Christopher Madden, Jacqueline Ike, Isabelle Smith, Yuankai Huo, Lee Wheless
PURPOSE OF REVIEW: The purpose was to summarize the current role and state of artificial intelligence and machine learning in the diagnosis and management of melanoma. RECENT FINDINGS: Deep learning algorithms can identify melanoma from clinical, dermoscopic, and whole slide pathology images with increasing accuracy. Efforts to provide more granular annotation to datasets and to identify new predictors are ongoing. There have been many incremental advances in both melanoma diagnostics and prognostic tools using artificial intelligence and machine learning...
March 31, 2023: Current Oncology Reports
https://read.qxmd.com/read/36963352/observational-study-investigating-the-level-of-support-from-a-convolutional-neural-network-in-face-and-scalp-lesions-deemed-diagnostically-unclear-by-dermatologists
#31
JOURNAL ARTICLE
Katharina S Kommoss, Julia K Winkler, Christine Mueller-Christmann, Felicitas Bardehle, Ferdinand Toberer, Wilhelm Stolz, Teresa Kraenke, Rainer Hofmann-Wellenhof, Andreas Blum, Alexander Enk, Albert Rosenberger, Holger A Haenssle
BACKGROUND: The clinical diagnosis of face and scalp lesions (FSL) is challenging due to overlapping features. Dermatologists encountering diagnostically 'unclear' lesions may benefit from artificial intelligence support via convolutional neural networks (CNN). METHODS: In a web-based classification task, dermatologists (n = 64) diagnosed a convenience sample of 100 FSL as 'benign', 'malignant', or 'unclear' and indicated their management decisions ('no action', 'follow-up', 'treatment/excision')...
March 5, 2023: European Journal of Cancer
https://read.qxmd.com/read/36860605/updates-in-cutaneous-oncology
#32
JOURNAL ARTICLE
Jesse Hirner
Cutaneous oncology is currently a rapidly evolving field. Dermoscopy, total body photography, biomarkers, and artificial intelligence are affecting the way skin cancers, especially melanoma, are diagnosed and monitored. The medical management of locally advanced and metastatic skin cancer is also changing. In this article, we will discuss recent developments in cutaneous oncology with a particular focus on treatment of advanced cancers.
2023: Missouri Medicine
https://read.qxmd.com/read/36785993/the-application-of-artificial-intelligence-in-the-detection-of-basal-cell-carcinoma-a-systematic-review
#33
REVIEW
Y Widaatalla, T Wolswijk, F Adan, L M Hillen, H C Woodruff, I Halilaj, A Ibrahim, P Lambin, K Mosterd
Basal cell carcinoma (BCC) is one of the most common types of cancer. The growing incidence worldwide and the need for fast, reliable, and less invasive diagnostic techniques make a strong case for the application of different artificial intelligence techniques for detecting and classifying BCC and its subtypes. We report on the current evidence regarding the application of handcrafted and deep radiomics models used for the detection and classification of BCC in dermoscopy, optical coherence tomography, and reflectance confocal microscopy...
February 14, 2023: Journal of the European Academy of Dermatology and Venereology: JEADV
https://read.qxmd.com/read/36701878/multiclass-skin-lesion-localization-and-classification-using-deep-learning-based-features-fusion-and-selection-framework-for-smart-healthcare
#34
JOURNAL ARTICLE
Sarmad Maqsood, Robertas Damaševičius
BACKGROUND: The idea of smart healthcare has gradually gained attention as a result of the information technology industry's rapid development. Smart healthcare uses next-generation technologies i.e., artificial intelligence (AI) and Internet of Things (IoT), to intelligently transform current medical methods to make them more efficient, dependable and individualized. One of the most prominent uses of telemedicine and e-health in medical image analysis is teledermatology. Telecommunications technologies are used in this industry to send medical information to professionals...
January 24, 2023: Neural Networks: the Official Journal of the International Neural Network Society
https://read.qxmd.com/read/36688890/the-role-of-mobile-teledermoscopy-in-skin-cancer-triage-and-management-during-the-covid-19-pandemic
#35
REVIEW
Claudia Lee, Alexander Witkowski, Magdalena Żychowska, Joanna Ludzik
The unprecedented onset of the COVID-19 crisis poses a significant challenge to all fields of medicine, including dermatology. Since the start of the coronavirus outbreak, a stark decline in new skin cancer diagnoses has been reported by countries worldwide. One of the greatest challenges during the pandemic has been the reduced access to face-to-face dermatologic evaluation and non-urgent procedures, such as biopsies or surgical excisions. Teledermatology is a well-integrated alternative when face-to-face dermatological assistance is not available...
December 8, 2022: Indian Journal of Dermatology, Venereology and Leprology
https://read.qxmd.com/read/36652282/agreement-between-experts-and-an-untrained-crowd-for-identifying-dermoscopic-features-using-a-gamified-app-reader-feasibility-study
#36
JOURNAL ARTICLE
Jonathan Kentley, Jochen Weber, Konstantinos Liopyris, Ralph P Braun, Ashfaq A Marghoob, Elizabeth A Quigley, Kelly Nelson, Kira Prentice, Erik Duhaime, Allan C Halpern, Veronica Rotemberg
BACKGROUND: Dermoscopy is commonly used for the evaluation of pigmented lesions, but agreement between experts for identification of dermoscopic structures is known to be relatively poor. Expert labeling of medical data is a bottleneck in the development of machine learning (ML) tools, and crowdsourcing has been demonstrated as a cost- and time-efficient method for the annotation of medical images. OBJECTIVE: The aim of this study is to demonstrate that crowdsourcing can be used to label basic dermoscopic structures from images of pigmented lesions with similar reliability to a group of experts...
January 18, 2023: JMIR Medical Informatics
https://read.qxmd.com/read/36612151/identification-of-cancerous-skin-lesions-using-vibrational-optical-coherence-tomography-voct-use-of-voct-in-conjunction-with-machine-learning-to-diagnose-skin-cancer-remotely-using-telemedicine
#37
JOURNAL ARTICLE
Frederick H Silver, Arielle Mesica, Michael Gonzalez-Mercedes, Tanmay Deshmukh
In this pilot study, we used vibrational optical tomography (VOCT), along with machine learning, to evaluate the specificity and sensitivity of using light and audible sound to differentiate between normal skin and skin cancers. The results reported indicate that the use of machine learning, and the height and location of the VOCT mechanovibrational peaks, have potential for being used to noninvasively differentiate between normal skin and different cancerous lesions. VOCT data, along with machine learning, is shown to predict the differences between normal skin and different skin cancers with a sensitivity and specificity at rates between 78 and 90%...
December 27, 2022: Cancers
https://read.qxmd.com/read/36612016/dynamic-optical-coherence-tomography-a-non-invasive-imaging-tool-for-the-distinction-of-nevi-and-melanomas
#38
JOURNAL ARTICLE
Maria Katharina Elisabeth Perwein, Julia Welzel, Nathalie De Carvalho, Giovanni Pellacani, Sandra Schuh
Along with the rising melanoma incidence in recent decades and bad prognoses resulting from late diagnoses, distinguishing between benign and malignant melanocytic lesions has become essential. Unclear cases may require the aid of non-invasive imaging to reduce unnecessary biopsies. This multicentric, case-control study evaluated the potential of dynamic optical coherence tomography (D-OCT) to identify distinguishing microvascular features in nevi. A total of 167 nevi, including dysplastic ones, on 130 participants of all ages and sexes were examined by D-OCT and dermoscopy with a histological reference...
December 20, 2022: Cancers
https://read.qxmd.com/read/36580975/-the-rise-of-artificial-intelligence-high-prediction-accuracy-in-early-detection-of-pigmented-melanoma
#39
JOURNAL ARTICLE
Tanja Jutzi, Eva I Krieghoff-Henning, Titus J Brinker
The incidence of malignant melanoma is increasing worldwide. If detected early, melanoma is highly treatable, so early detection is vital.Skin cancer early detection has improved significantly in recent decades, for example by the introduction of screening in 2008 and dermoscopy. Nevertheless, in particular visual detection of early melanomas remains challenging because they show many morphological overlaps with nevi. Hence, there continues to be a high medical need to further develop methods for early skin cancer detection in order to be able to reliably diagnosemelanomas at a very early stage...
December 29, 2022: Laryngo- Rhino- Otologie
https://read.qxmd.com/read/36497368/diagnostics-using-non-invasive-technologies-in-dermatological-oncology
#40
REVIEW
Simone Soglia, Javiera Pérez-Anker, Nelson Lobos Guede, Priscila Giavedoni, Susana Puig, Josep Malvehy
The growing incidence of skin cancer, with its associated mortality and morbidity, has in recent years led to the developing of new non-invasive technologies, which allow an earlier and more accurate diagnosis. Some of these, such as digital photography, 2D and 3D total-body photography and dermoscopy are now widely used and others, such as reflectance confocal microscopy and optical coherence tomography, are limited to a few academic and referral skin cancer centers because of their cost or the long training period required...
November 29, 2022: Cancers
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