Unsupervised neural networks as a support tool for pathology diagnosis in MALDI-MSI experiments: A case study on thyroid biopsies

Marco S. Nobile (Corresponding author), Giulia Capitoli, Virgil Sowirono, Francesca Clerici, Isabella Piga, Kirsten van Abeelen, Fulvio Magni, Fabio Pagni, Stefania Galimberti, Paolo Cazzaniga, Daniela Besozzi (Corresponding author)

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Abstract

Artificial intelligence is getting a foothold in medicine for disease screening and diagnosis. While typical machine learning methods require large labeled datasets for training and validation, their application is limited in clinical fields since ground truth information can hardly be obtained on a sizeable cohort of patients. Unsupervised neural networks – such as Self-Organizing Maps (SOMs) – represent an alternative approach to identifying hidden patterns in biomedical data. Here we investigate the feasibility of SOMs for the identification of malignant and non-malignant regions in liquid biopsies of thyroid nodules, on a patient-specific basis. MALDI-ToF (Matrix Assisted Laser Desorption Ionization - Time of Flight) mass spectrometry-imaging (MSI) was used to measure the spectral profile of bioptic samples. SOMs were then applied for the analysis of MALDI-MSI data of individual patients’ samples, also testing various pre-processing and agglomerative clustering methods to investigate their impact on SOMs’ discrimination efficacy. The final clustering was compared against the sample's probability to be malignant, hyperplastic or related to Hashimoto thyroiditis as quantified by multinomial regression with LASSO. Our results show that SOMs are effective in separating the areas of a sample containing benign cells from those containing malignant cells. Moreover, they allow to overlap the different areas of cytological glass slides with the corresponding proteomic profile image, and inspect the specific weight of every cellular component in bioptic samples. We envision that this approach could represent an effective means to assist pathologists in diagnostic tasks, avoiding the need to manually annotate cytological images and the effort in creating labeled datasets.

Original languageEnglish
Article number119296
Number of pages11
JournalExpert Systems with Applications
Volume215
DOIs
Publication statusPublished - 1 Apr 2023

Bibliographical note

Funding Information:
All authors approved the version of the manuscript to be published. This research was funded by Regione Lombardia POR FESR 2014-2020, Call HUB Ricerca ed Innovazione: Immun-HUB, Regione Lombardia, regional law n. 9/2020, resolution n. 3776/2020: Programma degli interventi per la ripresa economica: sviluppo di nuovi accordi di collaborazione con le universitá per la ricerca, l'innovazione e il trasferimento tecnologico: NephropaThy, Associazione Italiana Ricerca sul Cancro Grant - AIRC-MFAG 2016 Id. 18445, and Ricerca Finalizzata GR-2019-12368592. The study was conducted according to the guidelines of the Declaration of Helsinki, and approved by the Institutional Review Board (or Ethics Committee) of ASST Monza HSG (protocol code 18445 and date of approval 27/10/2016). The study was carried out in accordance with the relevant guidelines and regulations. It was approved by the ASST Monza Ethical Board (Associazione Italiana Ricerca sul Cancro - AIRC-MFAG 2016 Id. 18445, HSG Ethical Board Committee approval October 2016, 27/10/2016), and study participants signed an informed consent.

Funding Information:
This research was funded by Regione Lombardia POR FESR 2014-2020, Call HUB Ricerca ed Innovazione : Immun-HUB, Regione Lombardia, regional law n. 9/2020, resolution n. 3776/2020: Programma degli interventi per la ripresa economica: sviluppo di nuovi accordi di collaborazione con le universitá per la ricerca, l’innovazione e il trasferimento tecnologico : NephropaThy, Associazione Italiana Ricerca sul Cancro Grant - AIRC-MFAG 2016 Id. 18445 , and Ricerca Finalizzata GR-2019-12368592 .

Publisher Copyright:
© 2022 The Authors

Funding

All authors approved the version of the manuscript to be published. This research was funded by Regione Lombardia POR FESR 2014-2020, Call HUB Ricerca ed Innovazione: Immun-HUB, Regione Lombardia, regional law n. 9/2020, resolution n. 3776/2020: Programma degli interventi per la ripresa economica: sviluppo di nuovi accordi di collaborazione con le universitá per la ricerca, l'innovazione e il trasferimento tecnologico: NephropaThy, Associazione Italiana Ricerca sul Cancro Grant - AIRC-MFAG 2016 Id. 18445, and Ricerca Finalizzata GR-2019-12368592. The study was conducted according to the guidelines of the Declaration of Helsinki, and approved by the Institutional Review Board (or Ethics Committee) of ASST Monza HSG (protocol code 18445 and date of approval 27/10/2016). The study was carried out in accordance with the relevant guidelines and regulations. It was approved by the ASST Monza Ethical Board (Associazione Italiana Ricerca sul Cancro - AIRC-MFAG 2016 Id. 18445, HSG Ethical Board Committee approval October 2016, 27/10/2016), and study participants signed an informed consent. This research was funded by Regione Lombardia POR FESR 2014-2020, Call HUB Ricerca ed Innovazione : Immun-HUB, Regione Lombardia, regional law n. 9/2020, resolution n. 3776/2020: Programma degli interventi per la ripresa economica: sviluppo di nuovi accordi di collaborazione con le universitá per la ricerca, l’innovazione e il trasferimento tecnologico : NephropaThy, Associazione Italiana Ricerca sul Cancro Grant - AIRC-MFAG 2016 Id. 18445 , and Ricerca Finalizzata GR-2019-12368592 .

Keywords

  • MALDI-MSI
  • Mass spectrometry
  • Precision medicine
  • Self-Organizing Maps
  • Thyroid carcinoma
  • Unsupervised learning

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