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Machine learning algorithm for lung cancer prediction

https://read.qxmd.com/read/38673057/insights-from-explainable-artificial-intelligence-of-pollution-and-socioeconomic-influences-for-respiratory-cancer-mortality-in-italy
#1
JOURNAL ARTICLE
Donato Romano, Pierfrancesco Novielli, Domenico Diacono, Roberto Cilli, Ester Pantaleo, Nicola Amoroso, Loredana Bellantuono, Alfonso Monaco, Roberto Bellotti, Sabina Tangaro
Respiratory malignancies, encompassing cancers affecting the lungs, the trachea, and the bronchi, pose a significant and dynamic public health challenge. Given that air pollution stands as a significant contributor to the onset of these ailments, discerning the most detrimental agents becomes imperative for crafting policies aimed at mitigating exposure. This study advocates for the utilization of explainable artificial intelligence (XAI) methodologies, leveraging remote sensing data, to ascertain the primary influencers on the prediction of standard mortality rates (SMRs) attributable to respiratory cancer across Italian provinces, utilizing both environmental and socioeconomic data...
April 18, 2024: Journal of Personalized Medicine
https://read.qxmd.com/read/38662768/an-extensive-review-on-lung-cancer-therapeutics-using-machine-learning-techniques-state-of-the-art-and-perspectives
#2
REVIEW
Shaban Ahmad, Khalid Raza
Lung cancer starts when lung cells grow uncontrollably, forming tumours that make breathing difficult. There are more than 100 types of human cancer, and in most cases, it is untreatable due to the unavailability of medico-infrastructure and facilities, even though the USFDA approved 57 anticancer drugs in 2020 alone. WHO reported more than 10 million cancer-related deaths yearly, and lung cancer alone accounts for more than 1.80 million deaths and a few studies suggest lung cancer incidence and deaths may surpass 3...
April 25, 2024: Journal of Drug Targeting
https://read.qxmd.com/read/38652128/comparative-investigation-of-neoadjuvant-immunotherapy-versus-adjuvant-immunotherapy-in-perioperative-patients-with-cancer-a-global-scale-cross-sectional-large-sample-informatics-study
#3
JOURNAL ARTICLE
Song-Bin Guo, Le-Sheng Hu, Wei-Juan Huang, Zhen-Zhong Zhou, Hui-Yan Luo, Xiao-Peng Tian
BACKGROUND: Neoadjuvant and adjuvant immunotherapies for cancer have evolved through a series of remarkable and critical research advances; however, addressing their similarities and differences is imperative in clinical practice. Therefore, this study aimed to examine their similarities and differences from the perspective of informatics analysis. METHODS: This cross-sectional study retrospectively analyzed extensive relevant studies published between 2014 and 2023 using stringent search criteria, excluding non-peer-reviewed and non-English documents...
April 23, 2024: International Journal of Surgery
https://read.qxmd.com/read/38646415/application-of-machine-learning-for-lung-cancer-survival-prognostication-a-systematic-review-and-meta-analysis
#4
Alexander J Didier, Anthony Nigro, Zaid Noori, Mohamed A Omballi, Scott M Pappada, Danae M Hamouda
INTRODUCTION: Machine learning (ML) techniques have gained increasing attention in the field of healthcare, including predicting outcomes in patients with lung cancer. ML has the potential to enhance prognostication in lung cancer patients and improve clinical decision-making. In this systematic review and meta-analysis, we aimed to evaluate the performance of ML models compared to logistic regression (LR) models in predicting overall survival in patients with lung cancer. METHODS: We followed the Preferred Reporting Items for Systematic Reviews and Meta-Analysis (PRISMA) statement...
2024: Frontiers in artificial intelligence
https://read.qxmd.com/read/38645446/application-value-of-the-automated-machine-learning-model-based-on-modified-ct-index-combined-with-serological-indices-in-the-early-prediction-of-lung-cancer
#5
JOURNAL ARTICLE
Leyuan Meng, Ping Zhu, Kaijian Xia
BACKGROUND AND OBJECTIVE: Accurately predicting the extent of lung tumor infiltration is crucial for improving patient survival and cure rates. This study aims to evaluate the application value of an improved CT index combined with serum biomarkers, obtained through an artificial intelligence recognition system analyzing CT features of pulmonary nodules, in early prediction of lung cancer infiltration using machine learning models. PATIENTS AND METHODS: A retrospective analysis was conducted on clinical data of 803 patients hospitalized for lung cancer treatment from January 2020 to December 2023 at two hospitals: Hospital 1 (Affiliated Changshu Hospital of Soochow University) and Hospital 2 (Nantong Eighth People's Hospital)...
2024: Frontiers in Public Health
https://read.qxmd.com/read/38628722/identification-of-cnksr1-as-a-biomarker-for-cold-tumor-microenvironment-in-lung-adenocarcinoma-an-integrative-analysis-based-on-a-novel-workflow
#6
JOURNAL ARTICLE
Qidong Cai, Mou Peng
BACKGROUND: Therapies targeting PD1/PD-L1 pathway have revolutionized the treatment of lung cancer. However, anti-PD1/PD-L1 therapies have proven beneficial for only a select group of lung adenocarcinoma (LUAD) patients and generally do not work for immuno-cold tumors characterized by a lack of immune cell infiltration. Identifying novel biomarkers is vital to broad therapeutic options for LUAD patients with no response to anti-PD1/PD-L1 immunotherapies. METHODS: Our study has developed a novel strategy to identify a promising biomarker that addresses the limitations of anti-PD1/PD-L1 immunotherapy in treating immunological cold tumors...
April 30, 2024: Heliyon
https://read.qxmd.com/read/38604227/machine-learning-as-a-diagnostic-and-prognostic-tool-for-predicting-thrombosis-in-cancer-patients-a-systematic-review
#7
JOURNAL ARTICLE
Adham H El-Sherbini, Stefania Coroneos, Ali Zidan, Maha Othman
Khorana score (KS) is an established risk assessment model for predicting cancer-associated thrombosis. However, it ignores several risk factors and has poor predictability in some cancer types. Machine learning (ML) is a novel technique used for the diagnosis and prognosis of several diseases, including cancer-associated thrombosis, when trained on specific diagnostic modalities. Consolidating the literature on the use of ML for the prediction of cancer-associated thrombosis is necessary to understand its diagnostic and prognostic abilities relative to KS...
April 11, 2024: Seminars in Thrombosis and Hemostasis
https://read.qxmd.com/read/38601686/application-of-artificial-intelligence-in-the-diagnosis-treatment-and-recurrence-prediction-of-peritoneal-carcinomatosis
#8
REVIEW
Gui-Xia Wei, Yu-Wen Zhou, Zhi-Ping Li, Meng Qiu
Peritoneal carcinomatosis (PC) is a type of secondary cancer which is not sensitive to conventional intravenous chemotherapy. Treatment strategies for PC are usually palliative rather than curative. Recently, artificial intelligence (AI) has been widely used in the medical field, making the early diagnosis, individualized treatment, and accurate prognostic evaluation of various cancers, including mediastinal malignancies, colorectal cancer, lung cancer more feasible. As a branch of computer science, AI specializes in image recognition, speech recognition, automatic large-scale data extraction and output...
April 15, 2024: Heliyon
https://read.qxmd.com/read/38601163/computational-identification-and-experimental-verification-of-a-novel-signature-based-on-sars-cov-2-related-genes-for-predicting-prognosis-immune-microenvironment-and-therapeutic-strategies-in-lung-adenocarcinoma-patients
#9
JOURNAL ARTICLE
Yuzhi Wang, Yunfei Xu, Yuqin Deng, Liqiong Yang, Dengchao Wang, Zhizhen Yang, Yi Zhang
BACKGROUND: Early research indicates that cancer patients are more vulnerable to adverse outcomes and mortality when infected with severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). Nonetheless, the specific attributes of SARS-CoV-2 in lung Adenocarcinoma (LUAD) have not been extensively and methodically examined. METHODS: We acquired 322 SARS-CoV-2 infection-related genes (CRGs) from the Human Protein Atlas database. Using an integrative machine learning approach with 10 algorithms, we developed a SARS-CoV-2 score (Cov-2S) signature across The Cancer Genome Atlas and datasets GSE72094, GSE68465, and GSE31210...
2024: Frontiers in Immunology
https://read.qxmd.com/read/38585004/radiomics-model-based-on-intratumoral-and-peritumoral-features-for-predicting-major-pathological-response-in-non-small-cell-lung-cancer-receiving-neoadjuvant-immunochemotherapy
#10
JOURNAL ARTICLE
Dingpin Huang, Chen Lin, Yangyang Jiang, Enhui Xin, Fangyi Xu, Yi Gan, Rui Xu, Fang Wang, Haiping Zhang, Kaihua Lou, Lei Shi, Hongjie Hu
OBJECTIVE: To establish a radiomics model based on intratumoral and peritumoral features extracted from pre-treatment CT to predict the major pathological response (MPR) in patients with non-small cell lung cancer (NSCLC) receiving neoadjuvant immunochemotherapy. METHODS: A total of 148 NSCLC patients who underwent neoadjuvant immunochemotherapy from two centers (SRRSH and ZCH) were retrospectively included. The SRRSH dataset (n=105) was used as the training and internal validation cohort...
2024: Frontiers in Oncology
https://read.qxmd.com/read/38568892/machine-learning-for-differentiating-lung-squamous-cell-cancer-from-adenocarcinoma-using-clinical-metabolic-characteristics-and-18f-fdg-pet-ct-radiomics
#11
RANDOMIZED CONTROLLED TRIAL
Yalin Zhang, Huiling Liu, Cheng Chang, Yong Yin, Ruozheng Wang
Noninvasive differentiation between the squamous cell carcinoma (SCC) and adenocarcinoma (ADC) subtypes of non-small cell lung cancer (NSCLC) could benefit patients who are unsuitable for invasive diagnostic procedures. Therefore, this study evaluates the predictive performance of a PET/CT-based radiomics model. It aims to distinguish between the histological subtypes of lung adenocarcinoma and squamous cell carcinoma, employing four different machine learning techniques. A total of 255 Non-Small Cell Lung Cancer (NSCLC) patients were retrospectively analyzed and randomly divided into the training (n = 177) and validation (n = 78) sets, respectively...
2024: PloS One
https://read.qxmd.com/read/38559992/power-of-light-raman-spectroscopy-and-machine-learning-for-the-detection-of-lung-cancer
#12
JOURNAL ARTICLE
Harun Hano, Charles H Lawrie, Beatriz Suarez, Alfredo Paredes Lario, Ibone Elejoste Echeverría, Jenifer Gómez Mediavilla, Marina Izaskun Crespo Cruz, Eneko Lopez, Andreas Seifert
Lung cancer is the leading cause of cancer-related deaths worldwide, emphasizing the urgent need for reliable and efficient diagnostic methods. Conventional approaches often involve invasive procedures and can be time-consuming and costly, thereby delaying the effective treatment. The current study explores the potential of Raman spectroscopy, as a promising noninvasive technique, by analyzing human blood plasma samples from lung cancer patients and healthy controls. In a benchmark study, 16 machine learning models were evaluated by employing four strategies: the combination of dimensionality reduction with classifiers; application of feature selection prior to classification; stand-alone classifiers; and a unified predictive model...
March 26, 2024: ACS Omega
https://read.qxmd.com/read/38528631/head-and-neck-cancer-of-unknown-primary-unveiling-primary-tumor-sites-through-machine-learning-on-dna-methylation-profiles
#13
JOURNAL ARTICLE
Leonhard Stark, Atsuko Kasajima, Fabian Stögbauer, Benedikt Schmidl, Jakob Rinecker, Katharina Holzmann, Sarah Färber, Nicole Pfarr, Katja Steiger, Barbara Wollenberg, Jürgen Ruland, Christof Winter, Markus Wirth
BACKGROUND: The unknown tissue of origin in head and neck cancer of unknown primary (hnCUP) leads to invasive diagnostic procedures and unspecific and potentially inefficient treatment options for patients. The most common histologic subtype, squamous cell carcinoma, can stem from various tumor primary sites, including the oral cavity, oropharynx, larynx, head and neck skin, lungs, and esophagus. DNA methylation profiles are highly tissue-specific and have been successfully used to classify tissue origin...
March 25, 2024: Clinical Epigenetics
https://read.qxmd.com/read/38520581/dual-region-computed-tomography-radiomics-based-machine-learning-predicts-subcarinal-lymph-node-metastasis-in-patients-with-non-small-cell-lung-cancer
#14
JOURNAL ARTICLE
Hao-Ji Yan, Jia-Sheng Zhao, Hou-Dong Zuo, Jun-Jie Zhang, Zhi-Qiang Deng, Chen Yang, Xi Luo, Jia-Xin Wan, Xiang-Yun Zheng, Wei-Yang Chen, Su-Ping Li, Dong Tian
BACKGROUND: Noninvasively and accurately predicting subcarinal lymph node metastasis (SLNM) for patients with non-small cell lung cancer (NSCLC) remains challenging. This study was designed to develop and validate a tumor and subcarinal lymph nodes (tumor-SLNs) dual-region computed tomography (CT) radiomics model for predicting SLNM in NSCLC. METHODS: This retrospective study included NSCLC patients who underwent lung resection and SLNs dissection between January 2017 and December 2020...
March 23, 2024: Annals of Surgical Oncology
https://read.qxmd.com/read/38519636/machine-learning-framework-develops-neutrophil-extracellular-traps-model-for-clinical-outcome-and-immunotherapy-response-in-lung-adenocarcinoma
#15
JOURNAL ARTICLE
A Xuan Han, B Yaping Long, C Yao Li, D Di Huang, E Qi Xiong, F Jinfeng Li, G Liangliang Wu, Qiaowei Liu, G Bo Yang, H Yi Hu
Neutrophil extracellular traps (NETs) are novel inflammatory cell death in neutrophils. Emerging studies demonstrated NETs contributed to cancer progression and metastases in multiple ways. This study intends to provide a prognostic NETs signature and therapeutic target for lung adenocarcinoma (LUAD) patients. Consensus cluster analysis performed by 38 reported NET-related genes in TCGA-LUAD cohorts. Then, WGCNA network was conducted to investigate characteristics genes in clusters. Seven machine learning algorithms were assessed for training of the model, the optimal model was picked by C-index and 1-, 3-, 5-year ROC value...
March 22, 2024: Apoptosis: An International Journal on Programmed Cell Death
https://read.qxmd.com/read/38513170/plasma-proteome-based-test-for-first-line-treatment-selection-in-metastatic-non-small-cell-lung-cancer
#16
JOURNAL ARTICLE
Petros Christopoulos, Michal Harel, Kimberly McGregor, Yehuda Brody, Igor Puzanov, Jair Bar, Yehonatan Elon, Itamar Sela, Ben Yellin, Coren Lahav, Shani Raveh, Anat Reiner-Benaim, Niels Reinmuth, Hovav Nechushtan, David Farrugia, Ernesto Bustinza-Linares, Yanyan Lou, Raya Leibowitz, Iris Kamer, Alona Zer Kuch, Mor Moskovitz, Adva Levy-Barda, Ina Koch, Michal Lotem, Rivka Katzenelson, Abed Agbarya, Gillian Price, Helen Cheley, Mahmoud Abu-Amna, Tom Geldart, Maya Gottfried, Ella Tepper, Andreas Polychronis, Ido Wolf, Adam P Dicker, David P Carbone, David R Gandara
PURPOSE: Current guidelines for the management of metastatic non-small cell lung cancer (NSCLC) without driver mutations recommend checkpoint immunotherapy with PD-1/PD-L1 inhibitors, either alone or in combination with chemotherapy. This approach fails to account for individual patient variability and host immune factors and often results in less-than-ideal outcomes. To address the limitations of the current guidelines, we developed and subsequently blindly validated a machine learning algorithm using pretreatment plasma proteomic profiles for personalized treatment decisions...
March 2024: JCO Precision Oncology
https://read.qxmd.com/read/38507067/identification-of-a-novel-adcc-related-gene-signature-for-predicting-the-prognosis-and-therapy-response-in-lung-adenocarcinoma
#17
JOURNAL ARTICLE
Liangyu Zhang, Xun Zhang, Maohao Guan, Jianshen Zeng, Fengqiang Yu, Fancai Lai
BACKGROUND: Previous studies have largely neglected the role of ADCC in LUAD, and no study has systematically compiled ADCC-associated genes to create prognostic signatures. METHODS: In this study, 1564 LUAD patients, 2057 NSCLC patients, and more than 5000 patients with various cancer types from diverse cohorts were included. R package ConsensusClusterPlus was utilized to classify patients into different subtypes. A number of machine-learning algorithms were used to construct the ADCCRS...
March 20, 2024: Inflammation Research: Official Journal of the European Histamine Research Society ... [et Al.]
https://read.qxmd.com/read/38500083/unified-deep-learning-models-for-enhanced-lung-cancer-prediction-with-resnet-50-101-and-efficientnet-b3-using-dicom-images
#18
JOURNAL ARTICLE
Vinod Kumar, Chander Prabha, Preeti Sharma, Nitin Mittal, S S Askar, Mohamed Abouhawwash
Significant advancements in machine learning algorithms have the potential to aid in the early detection and prevention of cancer, a devastating disease. However, traditional research methods face obstacles, and the amount of cancer-related information is rapidly expanding. The authors have developed a helpful support system using three distinct deep-learning models, ResNet-50, EfficientNet-B3, and ResNet-101, along with transfer learning, to predict lung cancer, thereby contributing to health and reducing the mortality rate associated with this condition...
March 18, 2024: BMC Medical Imaging
https://read.qxmd.com/read/38496840/a-novel-prognostic-signature-of-coagulation-related-genes-leveraged-by-machine-learning-algorithms-for-lung-squamous-cell-carcinoma
#19
JOURNAL ARTICLE
Guo-Sheng Li, Rong-Quan He, Zhi-Guang Huang, Hong Huang, Zhen Yang, Jun Liu, Zong-Wang Fu, Wan-Ying Huang, Hua-Fu Zhou, Jin-Liang Kong, Gang Chen
Coagulation-related genes (CRGs) have been demonstrated to be essential for the development of certain tumors; however, little is known about CRGs in lung squamous cell carcinoma (LUSC). In this study, we adopted CRGs to construct a coagulation-related gene prognostic signature (CRGPS) using machine learning algorithms. Using a set of 92 machine learning integrated algorithms, the CRGPS was determined to be the optimal prognostic signature (median C-index = 0.600) for predicting the prognosis of an LUSC patient...
March 30, 2024: Heliyon
https://read.qxmd.com/read/38496688/systemic-immune-index-predicts-tumor-infiltrating-lymphocyte-intensity-and-immunotherapy-response-in-small-cell-lung-cancer
#20
JOURNAL ARTICLE
Chaoqiang Deng, Jiatao Liao, Zichen Fu, Fangqiu Fu, Di Li, Yuan Li, Jialei Wang, Haiquan Chen, Yang Zhang
BACKGROUND: Despite recent progresses in immune checkpoint blockade (ICB) in small-cell lung cancer (SCLC), a lack of understanding regarding the systemic tumor immune environment (STIE) and local tumor immune microenvironment (TIME) makes it difficult to accurately predict clinical outcomes and identify potential beneficiaries from ICB therapy. METHODS: We enrolled 191 patients with stage I-III SCLC and comprehensively evaluated the prognostic role of STIE by several quantitative measurements, and further integrate it with a local immune score system (LISS) established by eXtreme Gradient Boosting (XGBoost) machine learning algorithm...
February 29, 2024: Translational Lung Cancer Research
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