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Use Test of Automated Machine Learning in Cancer Diagnostics. | LitMetric

Use Test of Automated Machine Learning in Cancer Diagnostics.

Diagnostics (Basel)

University Clinic for Radiology, University Hospital Muenster, WWU Muenster, Albert-Schweitzer-Campus 1, DE-48149 Muenster, Germany.

Published: July 2023


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Article Abstract

Our aim is to investigate the added value of automated machine learning (AutoML) for potential future applications in cancer diagnostics. Using two important diagnostic questions, the non-invasive determination of IDH mutation status and ATRX status, we analyze whether it is possible to use AutoML to develop models that are comparable in performance to conventional machine learning models (ML) developed by experts. For this purpose, we develop AutoML models using different feature preselection methods and compare the results with previously developed conventional ML models. The cohort used for our study comprises T2-weighted MRI images of 124 patients with histologically confirmed gliomas. Using AutoML, we were able to develop sophisticated models in a very short time with only a few lines of computer code. In predicting IDH mutation status, we obtained a mean AUC of 0.7400 and a mean AUPRC of 0.8582. ATRX mutation status was predicted with very similar discriminatory power, with a mean AUC of 0.7810 and a mean AUPRC of 0.8511. In both cases, AutoML was even able to achieve a discriminatory power slightly above that of the respective conventionally developed models in a very short computing time, thus making such methods accessible to non-experts in the near future.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10378334PMC
http://dx.doi.org/10.3390/diagnostics13142315DOI Listing

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