Saved in:
Bibliographic Details
Main Authors: Stempfle, Lena, James, Arthur, Josse, Julie, Gauss, Tobias, Johansson, Fredrik D.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.09591
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912227889512448
author Stempfle, Lena
James, Arthur
Josse, Julie
Gauss, Tobias
Johansson, Fredrik D.
author_facet Stempfle, Lena
James, Arthur
Josse, Julie
Gauss, Tobias
Johansson, Fredrik D.
contents Inherently interpretable machine learning (IML) models offer valuable support for clinical decision-making but face challenges when features contain missing values. Traditional approaches, such as imputation or discarding incomplete records, are often impractical in scenarios where data is missing at test time. We surveyed 55 clinicians from 29 French trauma centers, collecting 20 complete responses to study their interaction with three IML models in a real-world clinical setting for predicting hemorrhagic shock with missing values. Our findings reveal that while clinicians recognize the value of interpretability and are familiar with common IML approaches, traditional imputation techniques often conflict with their intuition. Instead of imputing unobserved values, they rely on observed features combined with medical intuition and experience. As a result, methods that natively handle missing values are preferred. These findings underscore the need to integrate clinical reasoning into future IML models to enhance human-computer interaction.
format Preprint
id arxiv_https___arxiv_org_abs_2411_09591
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Handling missing values in clinical machine learning: Insights from an expert study
Stempfle, Lena
James, Arthur
Josse, Julie
Gauss, Tobias
Johansson, Fredrik D.
Machine Learning
Inherently interpretable machine learning (IML) models offer valuable support for clinical decision-making but face challenges when features contain missing values. Traditional approaches, such as imputation or discarding incomplete records, are often impractical in scenarios where data is missing at test time. We surveyed 55 clinicians from 29 French trauma centers, collecting 20 complete responses to study their interaction with three IML models in a real-world clinical setting for predicting hemorrhagic shock with missing values. Our findings reveal that while clinicians recognize the value of interpretability and are familiar with common IML approaches, traditional imputation techniques often conflict with their intuition. Instead of imputing unobserved values, they rely on observed features combined with medical intuition and experience. As a result, methods that natively handle missing values are preferred. These findings underscore the need to integrate clinical reasoning into future IML models to enhance human-computer interaction.
title Handling missing values in clinical machine learning: Insights from an expert study
topic Machine Learning
url https://arxiv.org/abs/2411.09591