Evaluation of grade and invasiveness of bladder urothelial carcinoma using infrared imaging and machine learning.
Monika KujdowiczDavid Perez-GuaitaPiotr ChlostaKrzysztof OkonKamilla MalekPublished in: The Analyst (2022)
Urothelial bladder carcinoma (BC) is primarily diagnosed with a subjective examination of biopsies by histopathologists, but accurate diagnosis remains time-consuming and of low diagnostic accuracy, especially for low grade non-invasive BC. We propose a novel approach for high-throughput BC evaluation by combining infrared (IR) microscopy of bladder sections with machine learning (partial least squares-discriminant analysis) to provide an automated prediction of the presence of cancer, invasiveness and grade. Cystoscopic biopsies from 50 patients with clinical suspicion of BC were histologically examined to assign grades and stages. Adjacent tissue cross-sections were IR imaged to provide hyperspectral datasets and cluster analysis segregated IR images to extract the average spectra of epithelial and subepithelial tissues. Discriminant models, which were validated using repeated random sampling double cross-validation, showed sensitivities (AUROC) ca. 85% (0.85) for the identification of cancer in epithelium and subepithelium. The diagnosis of non-invasive and invasive cases showed sensitivity values around 80% (0.84-0.85) and 76% (0.73-0.80), respectively, while the identification of low and high grade BC showed higher sensitivity values 87-88% (0.91-0.92). Finally, models for the discrimination between cancers with different invasiveness and grades showed more modest AUROC values (0.67-0.72). This proves the high potential of IR imaging in the development of ancillary platforms to screen bladder biopsies.
Keyphrases
- high grade
- low grade
- machine learning
- high throughput
- high resolution
- spinal cord injury
- urinary tract
- papillary thyroid
- deep learning
- squamous cell
- artificial intelligence
- gene expression
- optical coherence tomography
- ultrasound guided
- childhood cancer
- big data
- risk assessment
- squamous cell carcinoma
- single cell
- oxidative stress
- lymph node metastasis
- bioinformatics analysis
- sleep quality
- human health
- mass spectrometry
- rna seq
- depressive symptoms