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  1. Article: Accurate staging of non-small cell lung cancer-tissue is the issue.

    Navani, Neal

    Journal of thoracic disease

    2019  Volume 11, Issue 8, Page(s) E141–E143

    Language English
    Publishing date 2019-09-23
    Publishing country China
    Document type Journal Article ; Comment
    ZDB-ID 2573571-8
    ISSN 2077-6624 ; 2072-1439
    ISSN (online) 2077-6624
    ISSN 2072-1439
    DOI 10.21037/jtd.2019.07.62
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: Response.

    Navani, Neal / Burdett, Sarah

    Chest

    2019  Volume 156, Issue 3, Page(s) 634–635

    MeSH term(s) Carcinoma, Non-Small-Cell Lung ; Humans ; Lung Neoplasms ; Melanoma ; Uveal Neoplasms
    Language English
    Publishing date 2019-09-26
    Publishing country United States
    Document type Letter ; Comment
    ZDB-ID 1032552-9
    ISSN 1931-3543 ; 0012-3692
    ISSN (online) 1931-3543
    ISSN 0012-3692
    DOI 10.1016/j.chest.2019.05.006
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  3. Article ; Online: Factors influencing clinician and patient interaction with machine learning-based risk prediction models: a systematic review.

    Giddings, Rebecca / Joseph, Anabel / Callender, Thomas / Janes, Sam M / van der Schaar, Mihaela / Sheringham, Jessica / Navani, Neal

    The Lancet. Digital health

    2024  Volume 6, Issue 2, Page(s) e131–e144

    Abstract: Machine learning (ML)-based risk prediction models hold the potential to support the health-care setting in several ways; however, use of such models is scarce. We aimed to review health-care professional (HCP) and patient perceptions of ML risk ... ...

    Abstract Machine learning (ML)-based risk prediction models hold the potential to support the health-care setting in several ways; however, use of such models is scarce. We aimed to review health-care professional (HCP) and patient perceptions of ML risk prediction models in published literature, to inform future risk prediction model development. Following database and citation searches, we identified 41 articles suitable for inclusion. Article quality varied with qualitative studies performing strongest. Overall, perceptions of ML risk prediction models were positive. HCPs and patients considered that models have the potential to add benefit in the health-care setting. However, reservations remain; for example, concerns regarding data quality for model development and fears of unintended consequences following ML model use. We identified that public views regarding these models might be more negative than HCPs and that concerns (eg, extra demands on workload) were not always borne out in practice. Conclusions are tempered by the low number of patient and public studies, the absence of participant ethnic diversity, and variation in article quality. We identified gaps in knowledge (particularly views from under-represented groups) and optimum methods for model explanation and alerts, which require future research.
    MeSH term(s) Humans ; Health Personnel ; Qualitative Research ; Machine Learning ; Attitude of Health Personnel ; Risk Assessment/methods ; Patient Preference
    Language English
    Publishing date 2024-01-23
    Publishing country England
    Document type Systematic Review ; Journal Article ; Review
    ISSN 2589-7500
    ISSN (online) 2589-7500
    DOI 10.1016/S2589-7500(23)00241-8
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  4. Article ; Online: NICE reply to Jeba and Murray's letter on palliative care in lung cancer guidelines.

    Maconachie, Ross / Navani, Neal

    BMJ (Clinical research ed.)

    2019  Volume 365, Page(s) l4242

    MeSH term(s) Humans ; Lung Neoplasms ; Palliative Care ; Pulmonary Artery
    Language English
    Publishing date 2019-06-19
    Publishing country England
    Document type Letter ; Comment
    ZDB-ID 1362901-3
    ISSN 1756-1833 ; 0959-8154 ; 0959-8146 ; 0959-8138 ; 0959-535X ; 1759-2151
    ISSN (online) 1756-1833
    ISSN 0959-8154 ; 0959-8146 ; 0959-8138 ; 0959-535X ; 1759-2151
    DOI 10.1136/bmj.l4242
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  5. Article ; Online: Impact of the SARS-CoV-2 pandemic on lung cancer survival in England: an analysis of the rapid cancer registration dataset.

    Morgan, Helen / Gysling, Savannah / Navani, Neal / Baldwin, David / Hubbard, Richard / O'Dowd, Emma

    Thorax

    2023  Volume 79, Issue 1, Page(s) 83–85

    Abstract: Early changes in lung cancer care can affect survival. Given the decrease in diagnosis during lockdowns, we calculated their impact on survival using National Lung Cancer Audit data. Percentage survival and HRs for death were compared between 2019 and ... ...

    Abstract Early changes in lung cancer care can affect survival. Given the decrease in diagnosis during lockdowns, we calculated their impact on survival using National Lung Cancer Audit data. Percentage survival and HRs for death were compared between 2019 and lockdown periods of 2020. Decreased survival was observed from the first national lockdown onwards and within 90 days of diagnosis. HRs were highest for people diagnosed at the end of 2020 at 1.26 (95% CI 1.20 to 1.32) for death within 90 days and 1.51 (95% CI 1.42 to 1.60) for death between 91 and 270 days. Further work is needed on measures to mitigate this impact.
    MeSH term(s) Humans ; SARS-CoV-2 ; Lung Neoplasms ; COVID-19/epidemiology ; Pandemics ; Communicable Disease Control
    Language English
    Publishing date 2023-12-15
    Publishing country England
    Document type Journal Article
    ZDB-ID 204353-1
    ISSN 1468-3296 ; 0040-6376
    ISSN (online) 1468-3296
    ISSN 0040-6376
    DOI 10.1136/thorax-2022-219593
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  6. Article ; Online: Response.

    Perrotta, Fabio / Kerr, Keith M / Navani, Neal

    Chest

    2020  Volume 158, Issue 4, Page(s) 1787–1788

    MeSH term(s) B7-H1 Antigen ; Carcinoma, Non-Small-Cell Lung ; Humans ; Lung Neoplasms ; Ultrasonography, Interventional
    Chemical Substances B7-H1 Antigen
    Language English
    Publishing date 2020-10-06
    Publishing country United States
    Document type Letter ; Comment
    ZDB-ID 1032552-9
    ISSN 1931-3543 ; 0012-3692
    ISSN (online) 1931-3543
    ISSN 0012-3692
    DOI 10.1016/j.chest.2020.07.010
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  7. Article ; Online: Ninety-day mortality following lung cancer surgery: outcomes from the English national clinical outcomes audit.

    Morgan, Helen / Baldwin, David / Hubbard, Richard / Navani, Neal / West, Doug / O'Dowd, Emma Louise

    Thorax

    2022  Volume 77, Issue 7, Page(s) 724–726

    Abstract: Accurately explaining perioperative mortality and risk to patients is an essential part of shared decision making. In the case of lung cancer surgery, the currently available multivariable mortality prediction tools perform poorly, and could mislead ... ...

    Abstract Accurately explaining perioperative mortality and risk to patients is an essential part of shared decision making. In the case of lung cancer surgery, the currently available multivariable mortality prediction tools perform poorly, and could mislead patients. Using data from 2004 to 2012, this group has previously produced data tables for 90-day postoperative mortality, to be used as a communication aid in the consenting process. Using National Lung Cancer Clinical Outcomes audit data from 2017 to 2018, we have produced updated early mortality tables, to reflect current thoracic surgery practice.
    MeSH term(s) Humans ; Lung Neoplasms ; Pneumonectomy/adverse effects ; Thoracic Surgical Procedures
    Language English
    Publishing date 2022-04-28
    Publishing country England
    Document type Journal Article ; Research Support, Non-U.S. Gov't
    ZDB-ID 204353-1
    ISSN 1468-3296 ; 0040-6376
    ISSN (online) 1468-3296
    ISSN 0040-6376
    DOI 10.1136/thoraxjnl-2021-218308
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  8. Article ; Online: Young at Heart: Is That Good Enough for Computed Tomography Screening?

    Ruparel, Mamta / Navani, Neal

    American journal of respiratory and critical care medicine

    2017  Volume 196, Issue 5, Page(s) 539–541

    MeSH term(s) Heart ; Humans ; Tomography, X-Ray Computed
    Language English
    Publishing date 2017-08-10
    Publishing country United States
    Document type Journal Article ; Comment
    ZDB-ID 1180953-x
    ISSN 1535-4970 ; 0003-0805 ; 1073-449X
    ISSN (online) 1535-4970
    ISSN 0003-0805 ; 1073-449X
    DOI 10.1164/rccm.201707-1504ED
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  9. Article ; Online: Assessing eligibility for lung cancer screening using parsimonious ensemble machine learning models: A development and validation study.

    Callender, Thomas / Imrie, Fergus / Cebere, Bogdan / Pashayan, Nora / Navani, Neal / van der Schaar, Mihaela / Janes, Sam M

    PLoS medicine

    2023  Volume 20, Issue 10, Page(s) e1004287

    Abstract: Background: Risk-based screening for lung cancer is currently being considered in several countries; however, the optimal approach to determine eligibility remains unclear. Ensemble machine learning could support the development of highly parsimonious ... ...

    Abstract Background: Risk-based screening for lung cancer is currently being considered in several countries; however, the optimal approach to determine eligibility remains unclear. Ensemble machine learning could support the development of highly parsimonious prediction models that maintain the performance of more complex models while maximising simplicity and generalisability, supporting the widespread adoption of personalised screening. In this work, we aimed to develop and validate ensemble machine learning models to determine eligibility for risk-based lung cancer screening.
    Methods and findings: For model development, we used data from 216,714 ever-smokers recruited between 2006 and 2010 to the UK Biobank prospective cohort and 26,616 high-risk ever-smokers recruited between 2002 and 2004 to the control arm of the US National Lung Screening (NLST) randomised controlled trial. The NLST trial randomised high-risk smokers from 33 US centres with at least a 30 pack-year smoking history and fewer than 15 quit-years to annual CT or chest radiography screening for lung cancer. We externally validated our models among 49,593 participants in the chest radiography arm and all 80,659 ever-smoking participants in the US Prostate, Lung, Colorectal and Ovarian (PLCO) Screening Trial. The PLCO trial, recruiting from 1993 to 2001, analysed the impact of chest radiography or no chest radiography for lung cancer screening. We primarily validated in the PLCO chest radiography arm such that we could benchmark against comparator models developed within the PLCO control arm. Models were developed to predict the risk of 2 outcomes within 5 years from baseline: diagnosis of lung cancer and death from lung cancer. We assessed model discrimination (area under the receiver operating curve, AUC), calibration (calibration curves and expected/observed ratio), overall performance (Brier scores), and net benefit with decision curve analysis. Models predicting lung cancer death (UCL-D) and incidence (UCL-I) using 3 variables-age, smoking duration, and pack-years-achieved or exceeded parity in discrimination, overall performance, and net benefit with comparators currently in use, despite requiring only one-quarter of the predictors. In external validation in the PLCO trial, UCL-D had an AUC of 0.803 (95% CI: 0.783, 0.824) and was well calibrated with an expected/observed (E/O) ratio of 1.05 (95% CI: 0.95, 1.19). UCL-I had an AUC of 0.787 (95% CI: 0.771, 0.802), an E/O ratio of 1.0 (95% CI: 0.92, 1.07). The sensitivity of UCL-D was 85.5% and UCL-I was 83.9%, at 5-year risk thresholds of 0.68% and 1.17%, respectively, 7.9% and 6.2% higher than the USPSTF-2021 criteria at the same specificity. The main limitation of this study is that the models have not been validated outside of UK and US cohorts.
    Conclusions: We present parsimonious ensemble machine learning models to predict the risk of lung cancer in ever-smokers, demonstrating a novel approach that could simplify the implementation of risk-based lung cancer screening in multiple settings.
    MeSH term(s) Humans ; Male ; Early Detection of Cancer/methods ; Lung Neoplasms/diagnosis ; Lung Neoplasms/epidemiology ; Machine Learning ; Mass Screening/methods ; Prospective Studies ; Risk Assessment/methods ; Randomized Controlled Trials as Topic
    Language English
    Publishing date 2023-10-03
    Publishing country United States
    Document type Journal Article ; Validation Study ; Research Support, Non-U.S. Gov't ; Research Support, U.S. Gov't, Non-P.H.S.
    ZDB-ID 2185925-5
    ISSN 1549-1676 ; 1549-1277
    ISSN (online) 1549-1676
    ISSN 1549-1277
    DOI 10.1371/journal.pmed.1004287
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  10. Article: What is the optimal management of potentially resectable stage III-N2 NSCLC? Results of a fixed-effects network meta-analysis and economic modelling.

    Evison, Matthew / Maconachie, Ross / Mercer, Toby / Daly, Caitlin H / Welton, Nicky J / Aslam, Shahzeena / West, Doug / Navani, Neal

    ERJ open research

    2023  Volume 9, Issue 2

    Abstract: Introduction: There is a critical need to understand the optimal treatment regimen in patients with potentially resectable stage III-N2 nonsmall cell lung cancer (NSCLC).: Methods: A systematic review of randomised controlled trials was carried out ... ...

    Abstract Introduction: There is a critical need to understand the optimal treatment regimen in patients with potentially resectable stage III-N2 nonsmall cell lung cancer (NSCLC).
    Methods: A systematic review of randomised controlled trials was carried out using a literature search including the CDSR, CENTRAL, DARE, HTA, EMBASE and MEDLINE bibliographic databases. Selected trials were used to perform a Bayesian fixed-effects network meta-analysis and economic modelling of treatment regimens relevant to current-day treatment options: chemotherapy plus surgery (CS), chemotherapy plus radiotherapy (CR) and chemoradiotherapy followed by surgery (CRS).
    Findings: Six trials were prioritised for evidence synthesis. The fixed-effects network meta-analyses demonstrated an improvement in disease-free survival (DFS) for CRS
    Interpretation: CRS provides an extended time in a disease-free state leading to improved cost-effectiveness over CR and CS in potentially resectable stage III-N2 NSCLC.
    Language English
    Publishing date 2023-04-03
    Publishing country England
    Document type Journal Article
    ZDB-ID 2827830-6
    ISSN 2312-0541
    ISSN 2312-0541
    DOI 10.1183/23120541.00299-2022
    Database MEDical Literature Analysis and Retrieval System OnLINE

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