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Machine Learning for Outcome Prediction in First-Line Surgery of Prolactinomas

BACKGROUND: First-line surgery for prolactinomas has gained increasing acceptance, but the indication still remains controversial. Thus, accurate prediction of unfavorable outcomes after upfront surgery in prolactinoma patients is critical for the triage of therapy and for interdisciplinary decision...

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Autores principales: Huber, Markus, Luedi, Markus M., Schubert, Gerrit A., Musahl, Christian, Tortora, Angelo, Frey, Janine, Beck, Jürgen, Mariani, Luigi, Christ, Emanuel, Andereggen, Lukas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8888454/
https://www.ncbi.nlm.nih.gov/pubmed/35250868
http://dx.doi.org/10.3389/fendo.2022.810219
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author Huber, Markus
Luedi, Markus M.
Schubert, Gerrit A.
Musahl, Christian
Tortora, Angelo
Frey, Janine
Beck, Jürgen
Mariani, Luigi
Christ, Emanuel
Andereggen, Lukas
author_facet Huber, Markus
Luedi, Markus M.
Schubert, Gerrit A.
Musahl, Christian
Tortora, Angelo
Frey, Janine
Beck, Jürgen
Mariani, Luigi
Christ, Emanuel
Andereggen, Lukas
author_sort Huber, Markus
collection PubMed
description BACKGROUND: First-line surgery for prolactinomas has gained increasing acceptance, but the indication still remains controversial. Thus, accurate prediction of unfavorable outcomes after upfront surgery in prolactinoma patients is critical for the triage of therapy and for interdisciplinary decision-making. OBJECTIVE: To evaluate whether contemporary machine learning (ML) methods can facilitate this crucial prediction task in a large cohort of prolactinoma patients with first-line surgery, we investigated the performance of various classes of supervised classification algorithms. The primary endpoint was ML-applied risk prediction of long-term dopamine agonist (DA) dependency. The secondary outcome was the prediction of the early and long-term control of hyperprolactinemia. METHODS: By jointly examining two independent performance metrics – the area under the receiver operating characteristic (AUROC) and the Matthews correlation coefficient (MCC) – in combination with a stacked super learner, we present a novel perspective on how to assess and compare the discrimination capacity of a set of binary classifiers. RESULTS: We demonstrate that for upfront surgery in prolactinoma patients there are not a one-algorithm-fits-all solution in outcome prediction: different algorithms perform best for different time points and different outcomes parameters. In addition, ML classifiers outperform logistic regression in both performance metrics in our cohort when predicting the primary outcome at long-term follow-up and secondary outcome at early follow-up, thus provide an added benefit in risk prediction modeling. In such a setting, the stacking framework of combining the predictions of individual base learners in a so-called super learner offers great potential: the super learner exhibits very good prediction skill for the primary outcome (AUROC: mean 0.9, 95% CI: 0.92 – 1.00; MCC: 0.85, 95% CI: 0.60 – 1.00). In contrast, predicting control of hyperprolactinemia is challenging, in particular in terms of early follow-up (AUROC: 0.69, 95% CI: 0.50 – 0.83) vs. long-term follow-up (AUROC: 0.80, 95% CI: 0.58 – 0.97). It is of clinical importance that baseline prolactin levels are by far the most important outcome predictor at early follow-up, whereas remissions at 30 days dominate the ML prediction skill for DA-dependency over the long-term. CONCLUSIONS: This study highlights the performance benefits of combining a diverse set of classification algorithms to predict the outcome of first-line surgery in prolactinoma patients. We demonstrate the added benefit of considering two performance metrics jointly to assess the discrimination capacity of a diverse set of classifiers.
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spelling pubmed-88884542022-03-03 Machine Learning for Outcome Prediction in First-Line Surgery of Prolactinomas Huber, Markus Luedi, Markus M. Schubert, Gerrit A. Musahl, Christian Tortora, Angelo Frey, Janine Beck, Jürgen Mariani, Luigi Christ, Emanuel Andereggen, Lukas Front Endocrinol (Lausanne) Endocrinology BACKGROUND: First-line surgery for prolactinomas has gained increasing acceptance, but the indication still remains controversial. Thus, accurate prediction of unfavorable outcomes after upfront surgery in prolactinoma patients is critical for the triage of therapy and for interdisciplinary decision-making. OBJECTIVE: To evaluate whether contemporary machine learning (ML) methods can facilitate this crucial prediction task in a large cohort of prolactinoma patients with first-line surgery, we investigated the performance of various classes of supervised classification algorithms. The primary endpoint was ML-applied risk prediction of long-term dopamine agonist (DA) dependency. The secondary outcome was the prediction of the early and long-term control of hyperprolactinemia. METHODS: By jointly examining two independent performance metrics – the area under the receiver operating characteristic (AUROC) and the Matthews correlation coefficient (MCC) – in combination with a stacked super learner, we present a novel perspective on how to assess and compare the discrimination capacity of a set of binary classifiers. RESULTS: We demonstrate that for upfront surgery in prolactinoma patients there are not a one-algorithm-fits-all solution in outcome prediction: different algorithms perform best for different time points and different outcomes parameters. In addition, ML classifiers outperform logistic regression in both performance metrics in our cohort when predicting the primary outcome at long-term follow-up and secondary outcome at early follow-up, thus provide an added benefit in risk prediction modeling. In such a setting, the stacking framework of combining the predictions of individual base learners in a so-called super learner offers great potential: the super learner exhibits very good prediction skill for the primary outcome (AUROC: mean 0.9, 95% CI: 0.92 – 1.00; MCC: 0.85, 95% CI: 0.60 – 1.00). In contrast, predicting control of hyperprolactinemia is challenging, in particular in terms of early follow-up (AUROC: 0.69, 95% CI: 0.50 – 0.83) vs. long-term follow-up (AUROC: 0.80, 95% CI: 0.58 – 0.97). It is of clinical importance that baseline prolactin levels are by far the most important outcome predictor at early follow-up, whereas remissions at 30 days dominate the ML prediction skill for DA-dependency over the long-term. CONCLUSIONS: This study highlights the performance benefits of combining a diverse set of classification algorithms to predict the outcome of first-line surgery in prolactinoma patients. We demonstrate the added benefit of considering two performance metrics jointly to assess the discrimination capacity of a diverse set of classifiers. Frontiers Media S.A. 2022-02-16 /pmc/articles/PMC8888454/ /pubmed/35250868 http://dx.doi.org/10.3389/fendo.2022.810219 Text en Copyright © 2022 Huber, Luedi, Schubert, Musahl, Tortora, Frey, Beck, Mariani, Christ and Andereggen https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Endocrinology
Huber, Markus
Luedi, Markus M.
Schubert, Gerrit A.
Musahl, Christian
Tortora, Angelo
Frey, Janine
Beck, Jürgen
Mariani, Luigi
Christ, Emanuel
Andereggen, Lukas
Machine Learning for Outcome Prediction in First-Line Surgery of Prolactinomas
title Machine Learning for Outcome Prediction in First-Line Surgery of Prolactinomas
title_full Machine Learning for Outcome Prediction in First-Line Surgery of Prolactinomas
title_fullStr Machine Learning for Outcome Prediction in First-Line Surgery of Prolactinomas
title_full_unstemmed Machine Learning for Outcome Prediction in First-Line Surgery of Prolactinomas
title_short Machine Learning for Outcome Prediction in First-Line Surgery of Prolactinomas
title_sort machine learning for outcome prediction in first-line surgery of prolactinomas
topic Endocrinology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8888454/
https://www.ncbi.nlm.nih.gov/pubmed/35250868
http://dx.doi.org/10.3389/fendo.2022.810219
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