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Artificial intelligence and melanoma

https://read.qxmd.com/read/38361141/basic-principles-of-artificial-intelligence-in-dermatology-explained-using-melanoma
#21
REVIEW
Tim Hartmann, Johannes Passauer, Julien Hartmann, Laura Schmidberger, Manfred Kneilling, Sebastian Volc
The use of artificial intelligence (AI) continues to establish itself in the most diverse areas of medicine at an increasingly fast pace. Nevertheless, many healthcare professionals lack the basic technical understanding of how this technology works, which severely limits its application in clinical settings and research. Thus, we would like to discuss the functioning and classification of AI using melanoma as an example in this review to build an understanding of the technology behind AI. For this purpose, elaborate illustrations are used that quickly reveal the technology involved...
March 2024: Journal der Deutschen Dermatologischen Gesellschaft: JDDG
https://read.qxmd.com/read/38357640/dicing-with-data-the-risks-benefits-tensions-and-tech-of-health-data-in-the-itobos-project
#22
JOURNAL ARTICLE
Niamh Aspell, Abigail Goldsteen, Robin Renwick
This paper will discuss the European funded iToBoS project, tasked by the European Commission to develop an AI diagnostic platform for the early detection of skin melanoma. The paper will outline the project, provide an overview of the data being processed, describe the impact assessment processes, and explain the AI privacy risk mitigation methods being deployed. Following this, the paper will offer a brief discussion of some of the more complex aspects: (1) the relatively low population clinical trial study cohort, which poses risks associated with data distinguishability and the masking ability of the applied anonymisation tools, (2) the project's ability to obtain informed consent from the study cohort given the complexity of the technologies, (3) the project's commitment to an open research data strategy and the additional privacy risk mitigations required to protect the multi-modal study data, and (4) the ability of the project to adequately explain the outputs of the algorithmic components to a broad range of stakeholders...
2024: Frontiers in digital health
https://read.qxmd.com/read/38355986/artificial-intelligence-in-immunotherapy-pet-spect-imaging
#23
REVIEW
Jeremy P McGale, Delphine L Chen, Stefano Trebeschi, Michael D Farwell, Anna M Wu, Cathy S Cutler, Lawrence H Schwartz, Laurent Dercle
OBJECTIVE: Immunotherapy has dramatically altered the therapeutic landscape for oncology, but more research is needed to identify patients who are likely to achieve durable clinical benefit and those who may develop unacceptable side effects. We investigated the role of artificial intelligence in PET/SPECT-guided approaches for immunotherapy-treated patients. METHODS: We performed a scoping review of MEDLINE, CENTRAL, and Embase databases using key terms related to immunotherapy, PET/SPECT imaging, and AI/radiomics through October 12, 2022...
February 15, 2024: European Radiology
https://read.qxmd.com/read/38352191/improving-shared-decision-making-about-cancer-treatment-through-design-based-data-driven-decision-support-tools-and-redesigning-care-paths-an-overview-of-the-4d-picture-project
#24
JOURNAL ARTICLE
Judith A C Rietjens, Ingeborg Griffioen, Jorge Sierra-Pérez, Gaby Sroczynski, Uwe Siebert, Alena Buyx, Barbara Peric, Inge Marie Svane, Jasper B P Brands, Karina D Steffensen, Carlos Romero Piqueras, Elham Hedayati, Maria M Karsten, Norbert Couespel, Canan Akoglu, Roberto Pazo-Cid, Paul Rayson, Hester F Lingsma, Maartje H N Schermer, Ewout W Steyerberg, Sheila A Payne, Ida J Korfage, Anne M Stiggelbout
BACKGROUND: Patients with cancer often have to make complex decisions about treatment, with the options varying in risk profiles and effects on survival and quality of life. Moreover, inefficient care paths make it hard for patients to participate in shared decision-making. Data-driven decision-support tools have the potential to empower patients, support personalized care, improve health outcomes and promote health equity. However, decision-support tools currently seldom consider quality of life or individual preferences, and their use in clinical practice remains limited, partly because they are not well integrated in patients' care paths...
2024: Palliative care and social practice
https://read.qxmd.com/read/38339380/artificial-intelligence-applied-to-non-invasive-imaging-modalities-in-identification-of-nonmelanoma-skin-cancer-a-systematic-review
#25
REVIEW
Emilie A Foltz, Alexander Witkowski, Alyssa L Becker, Emile Latour, Jeong Youn Lim, Andrew Hamilton, Joanna Ludzik
BACKGROUND: The objective of this study is to systematically analyze the current state of the literature regarding novel artificial intelligence (AI) machine learning models utilized in non-invasive imaging for the early detection of nonmelanoma skin cancers. Furthermore, we aimed to assess their potential clinical relevance by evaluating the accuracy, sensitivity, and specificity of each algorithm and assessing for the risk of bias. METHODS: Two reviewers screened the MEDLINE, Cochrane, PubMed, and Embase databases for peer-reviewed studies that focused on AI-based skin cancer classification involving nonmelanoma skin cancers and were published between 2018 and 2023...
February 1, 2024: Cancers
https://read.qxmd.com/read/38326655/tmtv-net-fully-automated-total-metabolic-tumor-volume-segmentation-in-lymphoma-pet-ct-images-a-multi-center-generalizability-analysis
#26
JOURNAL ARTICLE
Fereshteh Yousefirizi, Ivan S Klyuzhin, Joo Hyun O, Sara Harsini, Xin Tie, Isaac Shiri, Muheon Shin, Changhee Lee, Steve Y Cho, Tyler J Bradshaw, Habib Zaidi, François Bénard, Laurie H Sehn, Kerry J Savage, Christian Steidl, Carlos F Uribe, Arman Rahmim
PURPOSE: Total metabolic tumor volume (TMTV) segmentation has significant value enabling quantitative imaging biomarkers for lymphoma management. In this work, we tackle the challenging task of automated tumor delineation in lymphoma from PET/CT scans using a cascaded approach. METHODS: Our study included 1418 2-[18 F]FDG PET/CT scans from four different centers. The dataset was divided into 900 scans for development/validation/testing phases and 518 for multi-center external testing...
February 8, 2024: European Journal of Nuclear Medicine and Molecular Imaging
https://read.qxmd.com/read/38324293/federated-learning-for-decentralized-artificial-intelligence-in-melanoma-diagnostics
#27
JOURNAL ARTICLE
Sarah Haggenmüller, Max Schmitt, Eva Krieghoff-Henning, Achim Hekler, Roman C Maron, Christoph Wies, Jochen S Utikal, Friedegund Meier, Sarah Hobelsberger, Frank F Gellrich, Mildred Sergon, Axel Hauschild, Lars E French, Lucie Heinzerling, Justin G Schlager, Kamran Ghoreschi, Max Schlaak, Franz J Hilke, Gabriela Poch, Sören Korsing, Carola Berking, Markus V Heppt, Michael Erdmann, Sebastian Haferkamp, Konstantin Drexler, Dirk Schadendorf, Wiebke Sondermann, Matthias Goebeler, Bastian Schilling, Jakob N Kather, Stefan Fröhling, Titus J Brinker
IMPORTANCE: The development of artificial intelligence (AI)-based melanoma classifiers typically calls for large, centralized datasets, requiring hospitals to give away their patient data, which raises serious privacy concerns. To address this concern, decentralized federated learning has been proposed, where classifier development is distributed across hospitals. OBJECTIVE: To investigate whether a more privacy-preserving federated learning approach can achieve comparable diagnostic performance to a classical centralized (ie, single-model) and ensemble learning approach for AI-based melanoma diagnostics...
February 7, 2024: JAMA Dermatology
https://read.qxmd.com/read/38323537/the-state-of-artificial-intelligence-in-skin-cancer-publications
#28
JOURNAL ARTICLE
Maxine Joly-Chevrier, Anne Xuan-Lan Nguyen, Laurence Liang, Michael Lesko-Krleza, Philippe Lefrançois
BACKGROUND: Artificial intelligence (AI) in skin cancer is a promising research field to assist physicians and to provide support to patients remotely. Physicians' awareness to new developments in AI research is important to define the best practices and scope of integrating AI-enabled technologies within a clinical setting. OBJECTIVES: To analyze the characteristics and trends of AI skin cancer publications from dermatology journals. METHODS: AI skin cancer publications were retrieved in June 2022 from the Web of Science...
February 7, 2024: Journal of Cutaneous Medicine and Surgery
https://read.qxmd.com/read/38312244/comparison-of-large-language-models-in-management-advice-for-melanoma-google-s-ai-bard-bingai-and-chatgpt
#29
JOURNAL ARTICLE
Xin Mu, Bryan Lim, Ishith Seth, Yi Xie, Jevan Cevik, Foti Sofiadellis, David J Hunter-Smith, Warren M Rozen
Large language models (LLMs) are emerging artificial intelligence (AI) technology refining research and healthcare. Their use in medicine has seen numerous recent applications. One area where LLMs have shown particular promise is in the provision of medical information and guidance to practitioners. This study aims to assess three prominent LLMs-Google's AI BARD, BingAI and ChatGPT-4 in providing management advice for melanoma by comparing their responses to current clinical guidelines and existing literature...
February 2024: Skin Health Dis
https://read.qxmd.com/read/38310497/fusion-of-deep-learning-with-conventional-imaging-processing-does-it-bring-artificial-intelligence-closer-to-the-clinic
#30
JOURNAL ARTICLE
Jason R Hagerty, Anand Nambisan, R Joe Stanley, William V Stoecker
No abstract text is available yet for this article.
February 1, 2024: Journal of Investigative Dermatology
https://read.qxmd.com/read/38297925/unveiling-the-power-of-convolutional-neural-networks-in-melanoma-diagnosis
#31
JOURNAL ARTICLE
Loïc Van Dieren, Jonathan Z Amar, Naomi Geurs, Tom Quisenaerts, Clément Gillet, Benoit Delforge, Lara De Crane D'heysselaer, E F Filip Thiessen, Curtis L Cetrulo, Alexandre G Lellouch
Convolutional neural networks are a type of deep learning algorithm. They are mostly applied in visual recognition and can be used for the identification of melanomas. Multiple studies have evaluated the performance of convolutional neural networks, and most algorithms match or even surpass the accuracy of dermatologists. However, only 23.8% of dermatologists have good or excellent knowledge of the topic. We believe that the lack of knowledge physicians experience regarding artificial intelligence is an obstacle to its clinical implementation...
October 1, 2023: European Journal of Dermatology: EJD
https://read.qxmd.com/read/38247920/optimizing-skin-cancer-survival-prediction-with-ensemble-techniques
#32
JOURNAL ARTICLE
Erum Yousef Abbasi, Zhongliang Deng, Arif Hussain Magsi, Qasim Ali, Kamlesh Kumar, Asma Zubedi
The advancement in cancer research using high throughput technology and artificial intelligence (AI) is gaining momentum to improve disease diagnosis and targeted therapy. However, the complex and imbalanced data with high dimensionality pose significant challenges for computational approaches and multi-omics data analysis. This study focuses on predicting skin cancer and analyzing overall survival probability. We employ the Kaplan-Meier estimator and Cox proportional hazards regression model, utilizing high-throughput machine learning (ML)-based ensemble methods...
December 31, 2023: Bioengineering
https://read.qxmd.com/read/38244612/can-chatgpt-vision-diagnose-melanoma-an-exploratory-diagnostic-accuracy-study
#33
JOURNAL ARTICLE
Naweed Shifai, Remco van Doorn, Josep Malvehy, Tobias Sangers
No abstract text is available yet for this article.
January 18, 2024: Journal of the American Academy of Dermatology
https://read.qxmd.com/read/38234043/evaluation-of-an-artificial-intelligence-based-decision-support-for-detection-of-cutaneous-melanoma-in-primary-care-a-prospective-real-life-clinical-trial
#34
JOURNAL ARTICLE
Panagiotis Papachristou, My Söderholm, Jon Pallon, Marina Taloyan, Sam Polesie, John Paoli, Chris D Anderson, Magnus Falk
BACKGROUND: Use of artificial intelligence, or machine learning, to assess dermoscopic images of skin lesions to detect melanoma has in several retrospective studies shown high levels of diagnostic accuracy on par with, or even outperforming, experienced dermatologists. However, the enthusiasm around these algorithms has not yet been matched by prospective clinical trials performed in authentic clinical settings. In several European countries, including Sweden, the initial clinical assessment of suspected skin cancer is principally conducted in the primary health care setting by primary care physicians; with or without access to teledermoscopic support from dermatology clinics...
January 17, 2024: British Journal of Dermatology
https://read.qxmd.com/read/38231164/a-narrative-review-opportunities-and-challenges-in-artificial-intelligence-skin-image-analyses-using-total-body-photography
#35
REVIEW
Clare A Primiero, Gisele Gargantini Rezze, Liam J Caffery, Cristina Carrera, Sebastian Podlipnik, Natalia Espinosa, Susana Puig, Monika Janda, H Peter Soyer, Josep Malvehy
Artificial intelligence (AI) algorithms for skin lesion classification have reported accuracy at par with and even outperformance of expert dermatologists in experimental settings. However, the majority of algorithms do not represent real-world clinical approach where skin phenotype and clinical background information are considered. We review the current state of AI for skin lesion classification and present opportunities and challenges when applied to total body photography (TBP). AI in TBP analysis presents opportunities for intrapatient assessment of skin phenotype and holistic risk assessment by incorporating patient-level metadata, although challenges exist for protecting patient privacy in algorithm development and improving explainable AI methods...
January 16, 2024: Journal of Investigative Dermatology
https://read.qxmd.com/read/38225244/dermatologist-like-explainable-ai-enhances-trust-and-confidence-in-diagnosing-melanoma
#36
JOURNAL ARTICLE
Tirtha Chanda, Katja Hauser, Sarah Hobelsberger, Tabea-Clara Bucher, Carina Nogueira Garcia, Christoph Wies, Harald Kittler, Philipp Tschandl, Cristian Navarrete-Dechent, Sebastian Podlipnik, Emmanouil Chousakos, Iva Crnaric, Jovana Majstorovic, Linda Alhajwan, Tanya Foreman, Sandra Peternel, Sergei Sarap, İrem Özdemir, Raymond L Barnhill, Mar Llamas-Velasco, Gabriela Poch, Sören Korsing, Wiebke Sondermann, Frank Friedrich Gellrich, Markus V Heppt, Michael Erdmann, Sebastian Haferkamp, Konstantin Drexler, Matthias Goebeler, Bastian Schilling, Jochen S Utikal, Kamran Ghoreschi, Stefan Fröhling, Eva Krieghoff-Henning, Titus J Brinker
Artificial intelligence (AI) systems have been shown to help dermatologists diagnose melanoma more accurately, however they lack transparency, hindering user acceptance. Explainable AI (XAI) methods can help to increase transparency, yet often lack precise, domain-specific explanations. Moreover, the impact of XAI methods on dermatologists' decisions has not yet been evaluated. Building upon previous research, we introduce an XAI system that provides precise and domain-specific explanations alongside its differential diagnoses of melanomas and nevi...
January 15, 2024: Nature Communications
https://read.qxmd.com/read/38214959/acceptance-of-medical-artificial-intelligence-in-skin-cancer-screening-choice-based-conjoint-survey
#37
JOURNAL ARTICLE
Inga Jagemann, Ole Wensing, Manuel Stegemann, Gerrit Hirschfeld
BACKGROUND: There is great interest in using artificial intelligence (AI) to screen for skin cancer. This is fueled by a rising incidence of skin cancer and an increasing scarcity of trained dermatologists. AI systems capable of identifying melanoma could save lives, enable immediate access to screenings, and reduce unnecessary care and health care costs. While such AI-based systems are useful from a public health perspective, past research has shown that individual patients are very hesitant about being examined by an AI system...
January 12, 2024: JMIR Formative Research
https://read.qxmd.com/read/38211314/a-generalized-model-for-monitor-units-determination-in-ocular-proton-therapy-using-machine-learning-a-proof-of-concept-study
#38
JOURNAL ARTICLE
Emmanuelle Fleury, Joel Herault, Kees Spruijt, Jasper Kouwenberg, Gaëlle Angellier, Petter Hofverberg, Tomasz Horwacik, Tomasz Kajdrowicz, Jean-Philippe Pignol, Mischa S Hoogeman, Petra Trnková
Determining and verifying the number of monitor units is crucial to achieving the desired dose distribution in radiotherapy and maintaining treatment efficacy. However, current commercial treatment planning system(s) dedicated to ocular passive eyelines in proton therapy do not provide the number of monitor units for patient-specific plan delivery. Performing specific pretreatment field measurements, which is time and resource consuming, is usually gold-standard practice. This proof-of-concept study reports on the development of a multi-institutional-based generalized model for monitor units determination in proton therapy for eye melanoma treatments...
January 11, 2024: Physics in Medicine and Biology
https://read.qxmd.com/read/38199280/using-multiple-real-world-dermoscopic-photographs-of-one-lesion-improves-melanoma-classification-via-deep-learning
#39
JOURNAL ARTICLE
Achim Hekler, Roman C Maron, Sarah Haggenmüller, Max Schmitt, Christoph Wies, Jochen S Utikal, Friedegund Meier, Sarah Hobelsberger, Frank F Gellrich, Mildred Sergon, Axel Hauschild, Lars E French, Lucie Heinzerling, Justin G Schlager, Kamran Ghoreschi, Max Schlaak, Franz J Hilke, Gabriela Poch, Sören Korsing, Carola Berking, Markus V Heppt, Michael Erdmann, Sebastian Haferkamp, Konstantin Drexler, Dirk Schadendorf, Wiebke Sondermann, Matthias Goebeler, Bastian Schilling, Jakob N Kather, Eva Krieghoff-Henning, Titus J Brinker
No abstract text is available yet for this article.
January 8, 2024: Journal of the American Academy of Dermatology
https://read.qxmd.com/read/38183141/refining-mutanome-based-individualised-immunotherapy-of-melanoma-using-artificial-intelligence
#40
REVIEW
Farida Zakariya, Fatma K Salem, Abdulwhhab Abu Alamrain, Vivek Sanker, Zainab G Abdelazeem, Mohamed Hosameldin, Joecelyn Kirani Tan, Rachel Howard, Helen Huang, Wireko Andrew Awuah
Using the particular nature of melanoma mutanomes to develop medicines that activate the immune system against specific mutations is a game changer in immunotherapy individualisation. It offers a viable solution to the recent rise in resistance to accessible immunotherapy alternatives, with some patients demonstrating innate resistance to these drugs despite past sensitisation to these agents. However, various obstacles stand in the way of this method, most notably the practicality of sequencing each patient's mutanome, selecting immunotherapy targets, and manufacturing specific medications on a large scale...
January 5, 2024: European Journal of Medical Research
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