Machine Learning-Assisted Classification of Paraffin-Embedded Brain Tumors with Raman Spectroscopy.
Gilbert Georg KlammingerLaurent MombaertsFrançoise KempFinn JelkeKaroline KleinRédouane SlimaniGiulia MirizziAndreas HuschFrank HertelMichel MittelbronnFelix Kleine BorgmannPublished in: Brain sciences (2024)
Raman spectroscopy (RS) has demonstrated its utility in neurooncological diagnostics, spanning from intraoperative tumor detection to the analysis of tissue samples peri- and postoperatively. In this study, we employed Raman spectroscopy (RS) to monitor alterations in the molecular vibrational characteristics of a broad range of formalin-fixed, paraffin-embedded (FFPE) intracranial neoplasms (including primary brain tumors and meningiomas, as well as brain metastases) and considered specific challenges when employing RS on FFPE tissue during the routine neuropathological workflow. We spectroscopically measured 82 intracranial neoplasms on CaF 2 slides (in total, 679 individual measurements) and set up a machine learning framework to classify spectral characteristics by splitting our data into training cohorts and external validation cohorts. The effectiveness of our machine learning algorithms was assessed by using common performance metrics such as AUROC and AUPR values. With our trained random forest algorithms, we distinguished among various types of gliomas and identified the primary origin in cases of brain metastases. Moreover, we spectroscopically diagnosed tumor types by using biopsy fragments of pure necrotic tissue, a task unattainable through conventional light microscopy. In order to address misclassifications and enhance the assessment of our models, we sought out significant Raman bands suitable for tumor identification. Through the validation phase, we affirmed a considerable complexity within the spectroscopic data, potentially arising not only from the biological tissue subjected to a rigorous chemical procedure but also from residual components of the fixation and paraffin-embedding process. The present study demonstrates not only the potential applications but also the constraints of RS as a diagnostic tool in neuropathology, considering the challenges associated with conducting vibrational spectroscopic analysis on formalin-fixed, paraffin-embedded (FFPE) tissue.
Keyphrases
- raman spectroscopy
- machine learning
- brain metastases
- big data
- small cell lung cancer
- artificial intelligence
- deep learning
- electronic health record
- randomized controlled trial
- molecular docking
- high throughput
- climate change
- magnetic resonance imaging
- high resolution
- high grade
- patients undergoing
- computed tomography
- density functional theory
- quantum dots
- mass spectrometry
- molecular dynamics simulations
- clinical practice
- high speed
- magnetic resonance
- bioinformatics analysis
- virtual reality
- energy transfer
- optic nerve