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Autori principali: Adiba, Farzana Islam, Danduri, Varsha, Piya, Fahmida Liza, Abbasi, Ali, Gupta, Mehak, Beheshti, Rahmatollah
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2601.11606
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author Adiba, Farzana Islam
Danduri, Varsha
Piya, Fahmida Liza
Abbasi, Ali
Gupta, Mehak
Beheshti, Rahmatollah
author_facet Adiba, Farzana Islam
Danduri, Varsha
Piya, Fahmida Liza
Abbasi, Ali
Gupta, Mehak
Beheshti, Rahmatollah
contents The MIMIC-IV dataset is a large, publicly available electronic health record (EHR) resource widely used for clinical machine learning research. It comprises multiple modalities, including structured data, clinical notes, waveforms, and imaging data. Working with these disjointed modalities requires an extensive manual effort to preprocess and align them for downstream analysis. While several pipelines for MIMIC-IV data extraction are available, they target a small subset of modalities or do not fully support arbitrary downstream applications. In this work, we greatly expand our prior popular unimodal pipeline and present a comprehensive and customizable multimodal pipeline that can significantly reduce multimodal processing time and enhance the reproducibility of MIMIC-based studies. Our pipeline systematically integrates the listed modalities, enabling automated cohort selection, temporal alignment across modalities, and standardized multimodal output formats suitable for arbitrary static and time-series downstream applications. We release the code, a simple UI, and a Python package for selective integration (with embedding) at https://github.com/healthylaife/MIMIC-IV-Data-Pipeline.
format Preprint
id arxiv_https___arxiv_org_abs_2601_11606
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Multimodal Data Processing Pipeline for MIMIC-IV Dataset
Adiba, Farzana Islam
Danduri, Varsha
Piya, Fahmida Liza
Abbasi, Ali
Gupta, Mehak
Beheshti, Rahmatollah
Machine Learning
The MIMIC-IV dataset is a large, publicly available electronic health record (EHR) resource widely used for clinical machine learning research. It comprises multiple modalities, including structured data, clinical notes, waveforms, and imaging data. Working with these disjointed modalities requires an extensive manual effort to preprocess and align them for downstream analysis. While several pipelines for MIMIC-IV data extraction are available, they target a small subset of modalities or do not fully support arbitrary downstream applications. In this work, we greatly expand our prior popular unimodal pipeline and present a comprehensive and customizable multimodal pipeline that can significantly reduce multimodal processing time and enhance the reproducibility of MIMIC-based studies. Our pipeline systematically integrates the listed modalities, enabling automated cohort selection, temporal alignment across modalities, and standardized multimodal output formats suitable for arbitrary static and time-series downstream applications. We release the code, a simple UI, and a Python package for selective integration (with embedding) at https://github.com/healthylaife/MIMIC-IV-Data-Pipeline.
title A Multimodal Data Processing Pipeline for MIMIC-IV Dataset
topic Machine Learning
url https://arxiv.org/abs/2601.11606