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Differentiation of primary CNS lymphoma and glioblastoma using Raman spectroscopy and machine learning algorithms.
Klamminger, Gilbert Georg; Klein, Karoline; Mombaerts, Laurent; Jelke, Finn; Mirizzi, Giulia; Slimani, Rédouane; Husch, Andreas; Mittelbronn, Michel; Hertel, Frank; Kleine Borgmann, Felix Bruno.
Affiliation
  • Klamminger GG; Saarland University Medical Center and Faculty of Medicine, Homburg Germany.
  • Klein K; National Center of Pathology (NCP), Laboratoire national de santé (LNS), Dudelange Luxembourg.
  • Mombaerts L; Luxembourg Center of Neuropathology (LCNP), Dudelange Luxembourg.
  • Jelke F; Saarland University Medical Center and Faculty of Medicine, Homburg Germany.
  • Mirizzi G; National Center of Neurosurgery, Centre Hospitalier de Luxembourg (CHL), Luxembourg Germany.
  • Slimani R; Luxembourg Centre of Systems Biomedicine (LCSB), University of Luxembourg (UL), Esch-sur-Alzette Luxembourg.
  • Husch A; Saarland University Medical Center and Faculty of Medicine, Homburg Germany.
  • Mittelbronn M; National Center of Neurosurgery, Centre Hospitalier de Luxembourg (CHL), Luxembourg Germany.
  • Hertel F; Saarland University Medical Center and Faculty of Medicine, Homburg Germany.
  • Kleine Borgmann FB; National Center of Neurosurgery, Centre Hospitalier de Luxembourg (CHL), Luxembourg Germany.
Free Neuropathol ; 22021 Jan.
Article in En | MEDLINE | ID: mdl-37284619
ABSTRACT
Objective and

Methods:

Timely discrimination between primary CNS lymphoma (PCNSL) and glioblastoma is crucial for diagnosis and therapy, but also determines the intraoperative surgical course. Advanced radiological methods allow for their distinction to a certain extent but ultimately, biopsies are still necessary for final diagnosis. As an upcoming method that enables tissue analysis by tracking changes in the vibrational state of molecules via inelastic scattered photons, we used Raman Spectroscopy (RS) as a label free method to examine specimens of both tumor entities intraoperatively, as well as postoperatively in formalin fixed paraffin embedded (FFPE) samples.

Results:

We applied and compared statistical performance of linear and nonlinear machine learning algorithms (Logistic Regression, Random Forest and XGBoost), and found that Random Forest classification distinguished the two tumor entities with a balanced accuracy of 82.4% in intraoperative tissue condition and with 94% using measurements of distinct tumor areas on FFPE tissue. Taking a deeper insight into the spectral properties of the tumor entities, we describe different tumor-specific Raman shifts of interest for classification.

Conclusions:

Due to our findings, we propose RS as an additional tool for fast and non-destructive tumor tissue discrimination, which may help to choose the proper treatment option. RS may further serve as a useful additional tool for neuropathological diagnostics with little requirements for tissue integrity.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Free Neuropathol Year: 2021 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Free Neuropathol Year: 2021 Document type: Article