Machine learning predicts histologic type and grade of canine gliomas based on MRI texture analysis.

Barge, Pablo; Oevermann, Anna; Maiolini, Arianna; Durand, Alexane (2023). Machine learning predicts histologic type and grade of canine gliomas based on MRI texture analysis. Veterinary radiology & ultrasound, 64(4), pp. 724-732. Wiley 10.1111/vru.13242

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Conventional MRI features of canine gliomas subtypes and grades significantly overlap. Texture analysis (TA) quantifies image texture based on spatial arrangement of pixel intensities. Machine learning (ML) models based on MRI-TA demonstrate high accuracy in predicting brain tumor types and grades in human medicine. The aim of this retrospective, diagnostic accuracy study was to investigate the accuracy of ML-based MRI-TA in predicting canine gliomas histologic types and grades. Dogs with histopathological diagnosis of intracranial glioma and available brain MRI were included. Tumors were manually segmented across their entire volume in enhancing part, non-enhancing part, and peri-tumoral vasogenic edema in T2-weighted (T2w), T1-weighted (T1w), FLAIR, and T1w postcontrast sequences. Texture features were extracted and fed into three ML classifiers. Classifiers' performance was assessed using a leave-one-out cross-validation approach. Multiclass and binary models were built to predict histologic types (oligodendroglioma vs. astrocytoma vs. oligoastrocytoma) and grades (high vs. low), respectively. Thirty-eight dogs with a total of 40 masses were included. Machine learning classifiers had an average accuracy of 77% for discriminating tumor types and of 75.6% for predicting high-grade gliomas. The support vector machine classifier had an accuracy of up to 94% for predicting tumor types and up to 87% for predicting high-grade gliomas. The most discriminative texture features of tumor types and grades appeared related to the peri-tumoral edema in T1w images and to the non-enhancing part of the tumor in T2w images, respectively. In conclusion, ML-based MRI-TA has the potential to discriminate intracranial canine gliomas types and grades.

Item Type:

Journal Article (Original Article)

Division/Institute:

05 Veterinary Medicine > Department of Clinical Veterinary Medicine (DKV) > DKV - Clinical Neurology
05 Veterinary Medicine > Department of Clinical Veterinary Medicine (DKV)
05 Veterinary Medicine > Department of Clinical Veterinary Medicine (DKV) > DKV - Clinical Radiology
05 Veterinary Medicine > Department of Clinical Research and Veterinary Public Health (DCR-VPH) > Experimental Clinical Research
05 Veterinary Medicine > Department of Clinical Research and Veterinary Public Health (DCR-VPH)

UniBE Contributor:

Barge Carmona, Pablo, Oevermann, Anna, Maiolini, Arianna, Durand, Alexane Marie Andrée

Subjects:

600 Technology > 630 Agriculture

ISSN:

1740-8261

Publisher:

Wiley

Language:

English

Submitter:

Pubmed Import

Date Deposited:

04 May 2023 09:31

Last Modified:

15 Jul 2023 00:14

Publisher DOI:

10.1111/vru.13242

PubMed ID:

37133981

Uncontrolled Keywords:

artificial intelligence dog glial cell neoplasm radiomics tumor heterogeneity

BORIS DOI:

10.48350/182285

URI:

https://boris.unibe.ch/id/eprint/182285

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