Diagnosis and prognosis of breast cancer by magnetic resonance spectroscopy of fine-needle aspirates analysed using a statistical classification strategy

Author:

Mountford C E1,Somorjai R L2,Malycha P3,Gluch L1,Lean C1,Russell P4,Barraclough B5,Gillett D5,Himmelreich U1,Dolenko B2,Nikulin A E2,Smith I C P2

Affiliation:

1. Department of Magnetic Resonance in Medicine, Institute for Magnetic Resonance Research, University of Sydney, Sydney, New South Wales, Australia

2. Institute for Biodiagnostics, National Research Council of Canada, Winnipeg, Manitoba, Canada

3. Department of Surgery, Royal Adelaide Hospital, University of Adelaide, South Australia, Australia

4. Department of Pathology, Institute for Magnetic Resonance Research, University of Sydney, Sydney, New South Wales, Australia

5. Department of Surgery, Institute for Magnetic Resonance Research, University of Sydney, Sydney, New South Wales, Australia

Abstract

Abstract Background The aim was to develop robust classifiers to analyse magnetic resonance spectroscopy (MRS) data of fine-needle aspirates taken from breast tumours. The resulting data could provide computerized, classification-based diagnosis and prognostic indicators. Methods Fine-needle aspirate biopsies obtained at the time of surgery for both benign and malignant breast diseases were analysed by one-dimensional proton MRS at 8·5 Tesla. Diagnostic correlation was performed between the spectra and standard pathology reports, including the presence of vascular invasion by the primary cancer and involvement of the excised axillary lymph nodes. Results Malignant tissue was distinguished from benign lesions with an overall accuracy of 93 per cent. From the same spectra, lymph node involvement was predicted with an overall accuracy of 95 per cent, and tumour vascular invasion with an overall accuracy of 94 per cent. Conclusion The pathology, nodal involvement and tumour vascular invasion were predicted by computerized statistical classification of the proton MRS spectrum from a fine-needle aspirate biopsy taken from the primary breast lesion.

Publisher

Oxford University Press (OUP)

Subject

Surgery

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