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Enregistrement W3152847844 · doi:10.1016/s2589-7500(21)00057-1

Who does the model learn from?

2021· letter· en· W3152847844 sur OpenAlexaboutno aff
Marie‐Laure Charpignon, Leo Anthony Celi, Mathew Cherian Samuel

Notice bibliographique

RevueThe Lancet Digital Health · 2021
Typeletter
Langueen
DomaineComputer Science
ThématiqueMachine Learning in Healthcare
Établissements canadiensnon disponible
Organismes subventionnairesNational Institute of Biomedical Imaging and Bioengineering
Mots-clésScopusMedicineArtificial intelligenceTransplantationMEDLINEInternal medicineComputer science

Résumé

récupéré en direct d'OpenAlex

Despite restrictions on surgeries and procedures during the COVID-19 pandemic in the USA, 2020 saw 8906 liver transplantations—more than in any previous year.1United Network for Organ SharingTransplant trends.https://unos.org/data/transplant-trendsDate: 2021Date accessed: March 19, 2021Google Scholar Liver transplant recipients often face risks of complications, such as graft failure, infection, cancer, or cardiovascular disease, and experience elevated mortality rates. For clinicians responsible for patient follow-up, monitoring, and preventative care, being able to predict and anticipate these complications is valuable. In The Lancet Digital Health, Osvald Nitski and colleagues provide a machine learning method both to identify patients at increased risk for one of these complications and to predict the magnitude of that risk, 1 year and 5 years after transplantation.2Nitski O Azhie A Qazi-Arisar FA et al.Long-term mortality risk stratification of liver transplant recipients: real-time application of deep learning algorithms on longitudinal data.Lancet Digit Health. 2021; (published online April 12.)https://doi.org/10.1016/S2589-7500(21)00040-6Summary Full Text Full Text PDF PubMed Scopus (7) Google Scholar Building upon recent literature on deep neural networks for survival analysis,3Katzman JL Shaham U Cloninger A Bates J Jiang T Kluger Y DeepSurv: personalized treatment recommender system using a Cox proportional hazards deep neural network.BMC Med Res Methodol. 2018; 18: 24Crossref PubMed Scopus (363) Google Scholar they applied a Transformer model to the prediction of post-operative outcomes among patients from two distinct cohorts in North America. Rather than relying on a select set of human-curated variables, deep learning models are able to process the full patient medical history, identify temporal trends, and automatically uncover non-linear relationships in the raw data. Such machine-learned patterns can be missed by domain experts and remain uncaptured by heuristic-driven model formulation. Nitski and colleagues initially trained their deep learning predictive risk scoring system on data from 42 146 adult patients who were transplanted between 2002 and 2014 and were part of the large US Scientific Registry of Transplant Recipients (SRTR); the authors then fine-tuned the model and tested it on the regional University Health Network (UHN) dataset of 3269 adult patients from a single large transplant programme in Ontario, Canada, transplanted between 1986 and 2014. The investigators showed that the model successfully predicted transplant-related mortality (ie, death due to graft failure, infection, cancer, or cardiovascular disease) within 5 years of transplantation, suggesting that it could be used to provide continuously updated mortality risk scores to guide clinical decision making during follow-up. The model's excellent performance across these two patient samples from vastly different health-care settings suggests robustness and transferability. Notably, this methodology differs from previous work by incorporating a greater number of predictors (190 input variables in the SRTR dataset and 63 in the UHN dataset) and allowing the model to learn more complex relationships in a data-driven manner. Additionally, the authors addressed model explainability,4Lundberg S Lee SI 2017. A unified approach to interpreting model predictions (version 2).arXiv. 2017; (published online Nov 25.) (preprint)https://arxiv.org/abs/1705.07874Google Scholar a recognised barrier to the adoption of machine learning models in health care, by using SHAP values—a concept borrowed from game theory—to determine sociodemographic factors (eg, recipient age at transplantation) and clinical factors (eg, hepatocellular carcinoma) influencing the predicted risk scores over multiple time horizons. This step is not only crucial in interpreting the rationale behind the predictions, but also a key safety check for flawed assumptions and specifications during modelling. Despite this comprehensive approach, a fundamental question is who does the model learn from? An implicit assumption when a model is trained on data is that the study cohort represents the target population for the algorithm. If this assumption is incorrect, the analysis might lead to spurious associations. For example, in a recent observational study among US veterans with SARS-CoV-2 infection,5Ioannou GN Locke E Green P et al.Risk factors for hospitalization, mechanical ventilation, or death among 10 131 US veterans with SARS-CoV-2 infection.JAMA Netw Open. 2020; 3e2022310Crossref PubMed Scopus (156) Google Scholar the authors reported that expected risk factors such as smoking and obesity were not associated with COVID-19 mortality. These observations are contradictory to published literature.6Guo FR Active smoking is associated with severity of coronavirus disease 2019 (COVID-19): an update of a meta-analysis.Tob Induc Dis. 2020; 18: 37Crossref PubMed Google Scholar, 7Popkin BM Du S Green WD et al.Individuals with obesity and COVID-19: a global perspective on the epidemiology and biological relationships.Obes Rev. 2020; 21e13128Crossref PubMed Scopus (445) Google Scholar This artifact results from a bias in the sample selection that distorts the known association in the general population. In this instance, the patient's likelihood of being hospitalised was conditioned on the risk factors of interest, smoking and obesity. Indeed, obesity prevalence8Nelson KM The burden of obesity among a national probability sample of veterans.J Gen Intern Med. 2006; 21: 915-919Crossref PubMed Scopus (105) Google Scholar and reported smoking rates among US veterans9Nieh C Powell TM Gackstetter GD Hooper TI Smoking among u.s. service members following transition from military to veteran status.Health Promot Pract. 2020; 21 (75S): 165Crossref PubMed Scopus (2) Google Scholar have consistently been higher than in the civilian population, and most COVID-19 clinical studies consist solely of tested patients requiring hospital admission. Collider bias is a byproduct of such restricted analysis: any detected associations would not reflect individual causal effects, neither within the study sample nor in the broader population. Collider bias could similarly affect prediction modelling of post-transplant outcomes. In Nitski and colleagues' study, the model was trained and validated on patients who underwent liver transplantation in North America. Notably, while the US SRTR dataset includes relevant demographic information about race and ethnicity of transplant recipients, the Ontario-based UHN does not provide such data, thus making it challenging to assess differences in pre-transplant and post-transplant care between population subgroups. However, both in North America and globally, equal access to liver transplantation remains challenging for racial and ethnic minorities. Three major sources of disparities appear along a transplant patient's journey: from examination by a primary care provider, to referral to a specialist, to selection for transplantation, to awaiting a donor, to successful transplantation. First, a patient with liver disease who was not referred to a transplant centre upon presentation to their primary care provider would never be represented in the dataset used for training and might thus respond differently. Even after adjusting for comorbidities, organ disease stage, and type of health insurance coverage, multiple studies reveal physician biases in listing practices that disproportionately affect certain regions.10Kemmer N Safdar K Kaiser TE Zacharias V Neff GW Liver transplantation trends for older recipients: regional and ethnic variations.Transplantation. 2008; 86: 104-107Crossref PubMed Scopus (24) Google Scholar Second, geographical discrepancies in waiting times and transplantation rates result in some groups being more likely to die before transplantation. Third, informational, social, and financial support in the continuum of care after transplantation influences adherence, a major driver of graft survival, and disproportionately impacts vulnerable populations. With an increasing number of organ transplantations every year, the application of deep learning offers tremendous possibilities to enhance the prediction of transplantation outcomes and tailor the delivery of post-surgery preventative care. Nitski and colleagues propose a promising approach, leveraging recent advances in deep learning, that could be applied to the prediction of complications from kidney, lung, or heart transplantation. Importantly, the predicted risk scores produced by such algorithms are ultimately provided to clinicians to inform care management decisions. For these risk indices to effectively individualise post-transplantation interventions going forwards, the data science and medical communities together need to critically assess the extent to which underlying biases in data collection might induce spurious associations and correct for them when possible. Without a careful and systematic evaluation of who the model learns from, such bias will persist and adversely impact the performance of predictive algorithms in practice and, ultimately, patient outcomes. We declare no competing interests. Long-term mortality risk stratification of liver transplant recipients: real-time application of deep learning algorithms on longitudinal dataDeep learning algorithms can incorporate longitudinal information to continuously predict long-term outcomes after liver transplantation, outperforming logistic regression models. Physicians could use these algorithms at routine follow-up visits to identify liver transplant recipients at risk for adverse outcomes and prevent these complications by modifying management based on ranked features. Full-Text PDF Open Access

Récupéré en direct depuis OpenAlex et désinversé. Les résumés ne sont pas conservés dans cette base de données : les index inversés représentent 8,6 Go des 9,3 Go de texte de la base, et le serveur dispose de 13 Go libres.

Comment cette classification a été obtenuedéplier

Prédiction distillée sur la base complète

Imitation des enseignants

Ni prévalence calibrée, ni vérité terrain. Validation humaine à venir. Apprise à partir de 10 348 étiquettes directes de Codex et de 10 348 étiquettes directes de Gemma. Le mode candidate est l'union des têtes enseignantes seuillées; le consensus est leur intersection. Ces sorties portent le statut machine_predicted_unvalidated et ne sont ni des étiquettes humaines ni des étiquettes directes de modèles de pointe.

score de la tête « metaresearch » (Codex)0,001
score de la tête « metaresearch » (Gemma)0,000
Version: codex-gemma-dda1882f352aStatut de validation: machine_predicted_unvalidated
Catégories candidatesCommunication savante, Intégrité de la recherche
Catégories consensuellesaucune
DomaineSignal candidat: aucune · Signal consensuel: aucune
Devis d'étudeSignal candidat: Sans objet · Signal consensuel: Sans objet
GenreSignal candidat: Commentaire · Signal consensuel: Commentaire
Score de désaccord entre enseignants0,094
Score d'incertitude au seuil1,000

Scores Codex et Gemma par catégorie

CatégorieCodexGemma
Métarecherche0,0010,000
Méta-épidémiologie (sens strict)0,0000,000
Méta-épidémiologie (sens large)0,0010,000
Bibliométrie0,0000,000
Études des sciences et des technologies0,0010,000
Communication savante0,0010,000
Science ouverte0,0050,001
Intégrité de la recherche0,0000,005
Charge utile insuffisante (le modèle a refusé de juger)0,0000,000

Scores machine (provisoires)

Les deux têtes enseignantes du modèle étudiant, lues sur ce travail. Un score ordonne la base pour la relecture; il n'affirme jamais une catégorie, et le statut de validation accompagne chaque rangée tel quel.

Scores de référence d'un modèle non mature (critères de maturité non atteints, 7 itérations). Un score ordonne; il n'affirme jamais une catégorie.

Tête enseignante Opus0,052
Tête enseignante GPT0,313
Écart entre enseignants0,262 · la distance entre les deux têtes enseignantes sur ce seul travail
Statut de validationscore_only:v0-immature-baseline · tel quel depuis la passe de notation : score_only signifie que le nombre peut ordonner les travaux, et qu'aucune étiquette de catégorie n'en découle

Classification

machine, non validée

Prédiction automatique; un appel candidat d’une seule tête enseignante, pas un consensus.

Devis d'étudeSans objet
Domainenon disponible
GenreCommentaire

Le détail, modèle par modèle et score par score, se trouve en fin de page sous « Comment cette classification a été obtenue ».

En bref

Citations4
Publié2021
Routes d'admission1
Résumé présentoui

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