Development and external validation of a machine learning-based prediction model for the cancer-related fatigue diagnostic screening in adult cancer patients: a cross-sectional study in China
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Qinqin Xu | Wenbo Nie | Wenxi Tan | Lisheng Wang | Tianxin Xu | Lin Du | Lijing Zhao | Jiannan Huang | Junjia Du | Min Yang
[1] Masaru Mimura,et al. A prediction model of qi stagnation: A prospective observational study referring to two existing models , 2022, Comput. Biol. Medicine.
[2] J. Skarbinski,et al. A New Approach to Understanding Cancer-Related Fatigue: Leveraging the 3P Model to Facilitate Risk Prediction and Clinical Care , 2022, Cancers.
[3] G. Lyratzopoulos,et al. Risk of cancer following primary care presentation with fatigue: a population-based cohort study of a quarter of a million patients , 2022, British Journal of Cancer.
[4] Wanqing Chen,et al. Cancer statistics in China and United States, 2022: profiles, trends, and determinants , 2022, Chinese medical journal.
[5] M. Balconi,et al. Fatigue and apathy in patients on chronic hemodialysis , 2021, Therapeutic apheresis and dialysis : official peer-reviewed journal of the International Society for Apheresis, the Japanese Society for Apheresis, the Japanese Society for Dialysis Therapy.
[6] A. Petru,et al. From Microcytosis to Macrodiagnosis , 2021, Pediatrics.
[7] C. Earle,et al. Development and validation of a prediction model of poor performance status and severe symptoms over time in cancer patients (PROVIEW+) , 2021, Palliative medicine.
[8] M. H. Shukur,et al. Blood indices, in-hospital outcome and short-term prognosis in patients with COVID-19 pneumonia. , 2021, Monaldi archives for chest disease = Archivio Monaldi per le malattie del torace.
[9] K. Ohe,et al. Supervised machine learning-based prediction for in-hospital pressure injury development using electronic health records: A retrospective observational cohort study in a university hospital in Japan. , 2021, International journal of nursing studies.
[10] Yan He,et al. Multidimensional fatigue in patients with nasopharyngeal carcinoma receiving concurrent chemoradiotherapy: incidence, severity, and risk factors , 2021, Supportive Care in Cancer.
[11] A. Jemal,et al. Global Cancer Statistics 2020: GLOBOCAN Estimates of Incidence and Mortality Worldwide for 36 Cancers in 185 Countries , 2021, CA: a cancer journal for clinicians.
[12] Junlin Zhou,et al. Nomogram based on preoperative CT imaging predicts the EGFR mutation status in lung adenocarcinoma , 2020, Translational oncology.
[13] Mohammed Al Maqbali,et al. Prevalence of Fatigue in Patients with Cancer: A Systematic Review and Meta-Analysis. , 2020, Journal of pain and symptom management.
[14] Hongxia Hua,et al. Risk factors and the utility of three different kinds of prediction models for postoperative fatigue after gastrointestinal tumor surgery , 2020, Supportive Care in Cancer.
[15] P. Murchie,et al. Patterns of symptoms possibly indicative of cancer and associated help-seeking behaviour in a large sample of United Kingdom residents—The USEFUL study , 2020, PloS one.
[16] D. Cella,et al. Screening Properties of the Diagnostic Criteria for Cancer-Related Fatigue , 2019, Oncology Research and Treatment.
[17] C. Berlind,et al. Applying a Machine Learning Approach to Predict Acute Toxicities During Radiation for Breast Cancer Patients , 2018, International Journal of Radiation Oncology*Biology*Physics.
[18] L. Frey-Law,et al. Physical activity is related to function and fatigue but not pain in women with fibromyalgia: baseline analyses from the Fibromyalgia Activity Study with TENS (FAST) , 2018, Arthritis Research & Therapy.
[19] Wei Du,et al. Identifying Genes to Predict Cancer Radiotherapy-Related Fatigue with Machine-Learning Methods , 2018, BCB.
[20] L. Cavanna,et al. Prevalence, characteristics, and treatment of fatigue in oncological cancer patients in Italy: a cross-sectional study of the Italian Network for Supportive Care in Cancer (NICSO) , 2018, Supportive Care in Cancer.
[21] F. Roila,et al. Fatigue, a major still underestimated issue , 2018, Current opinion in oncology.
[22] Wassim M. Haddad,et al. Replicating human expertise of mechanical ventilation waveform analysis in detecting patient-ventilator cycling asynchrony using machine learning , 2018, Comput. Biol. Medicine.
[23] Moon Soo Kim,et al. Comparison of fatigue, depression, and anxiety as factors affecting posttreatment health‐related quality of life in lung cancer survivors , 2018, Psycho-oncology.
[24] H. Sintonen,et al. Health-related quality of life in different states of breast cancer – comparing different instruments , 2017, Acta oncologica.
[25] Dennis P. Wall,et al. Machine learning approach for early detection of autism by combining questionnaire and home video screening , 2017, J. Am. Medical Informatics Assoc..
[26] R. Greil,et al. Cancer-Related Fatigue in Patients With and Survivors of Hodgkin Lymphoma: The Impact on Treatment Outcome and Social Reintegration. , 2016, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.
[27] James M Robins,et al. Using Big Data to Emulate a Target Trial When a Randomized Trial Is Not Available. , 2016, American journal of epidemiology.
[28] Manabu Torii,et al. Risk factor detection for heart disease by applying text analytics in electronic medical records , 2015, J. Biomed. Informatics.
[29] Stéphane M. Meystre,et al. Adapting existing natural language processing resources for cardiovascular risk factors identification in clinical notes , 2015, J. Biomed. Informatics.
[30] K. Rau,et al. Occurrence, severity, and impact of cancer-related fatigue in Taiwanese patients with cancer: A national survey. , 2015, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.
[31] K Hempstalk,et al. Machine learning algorithms for the prediction of conception success to a given insemination in lactating dairy cows. , 2015, Journal of dairy science.
[32] G. Collins,et al. Effect of Ebola Progression in Liberia , 2015, Annals of Internal Medicine.
[33] T. Islam,et al. Factors associated with return to work of breast cancer survivors: a systematic review , 2014, BMC Public Health.
[34] R. Veenhoven,et al. Early respiratory microbiota composition determines bacterial succession patterns and respiratory health in children. , 2014, American journal of respiratory and critical care medicine.
[35] Carolin Strobl,et al. Letter to the Editor: On the term ‘interaction’ and related phrases in the literature on Random Forests , 2014, Briefings Bioinform..
[36] David Cella,et al. Prevalence and characteristics of moderate to severe fatigue: A multicenter study in cancer patients and survivors , 2014, Cancer.
[37] Enrique J. deAndrés-Galiana,et al. Supervised Classification by Filter Methods and Recursive Feature Elimination Predicts Risk of Radiotherapy-Related Fatigue in Patients with Prostate Cancer , 2014, Cancer informatics.
[38] Stephen T. Sonis,et al. The Economic Burden of Toxicities Associated with Cancer Treatment: Review of the Literature and Analysis of Nausea and Vomiting, Diarrhoea, Oral Mucositis and Fatigue , 2013, PharmacoEconomics.
[39] Uma Srinivasan,et al. Leveraging Big Data Analytics to Reduce Healthcare Costs , 2013, IT Professional.
[40] Pei-ying Zhang,et al. Prevalence, intensity, and prognostic significance of common symptoms in terminally ill cancer patients. , 2013, Journal of palliative medicine.
[41] P. Jacobsen,et al. A systematic review of research using the diagnostic criteria for cancer‐related fatigue , 2013, Psycho-oncology.
[42] David Cella,et al. A literature synthesis of symptom prevalence and severity in persons receiving active cancer treatment , 2013, Supportive Care in Cancer.
[43] F. Dimeo,et al. Cancer-related fatigue: epidemiology, pathogenesis, diagnosis, and treatment. , 2012, Deutsches Arzteblatt international.
[44] W. Su,et al. An examination of cancer-related fatigue through proposed diagnostic criteria in a sample of cancer patients in Taiwan , 2011, BMC Cancer.
[45] P. Stone,et al. Validation of screening tools for cancer related fatigue syndrome (CRFS) , 2008 .
[46] P. Hinds,et al. Creating the basis for a breast health program for female survivors of Hodgkin disease using a participatory research approach. , 2005, Oncology nursing forum.
[47] R. Paridaens,et al. Comparison of proposed diagnostic criteria with FACT-F and VAS for cancer-related fatigue: proposal for use as a screening tool , 2005, Supportive Care in Cancer.
[48] Carl E. Rasmussen,et al. Gaussian processes for machine learning , 2005, Adaptive computation and machine learning.
[49] Leo Breiman,et al. Statistical Modeling: The Two Cultures (with comments and a rejoinder by the author) , 2001 .
[50] R. Pötter,et al. Quality of life changes during conformal radiation therapy for prostate carcinoma , 2000, Cancer.
[51] J A Swets,et al. Measuring the accuracy of diagnostic systems. , 1988, Science.