Machine Learning and Clinical-Radiological Characteristics for the Classification of Prostate Cancer in PI-RADS 3 Lesions.
Michela GravinaLorenzo SpiritoGiuseppe CelentanoMarco CapeceMassimiliano CretaGianluigi CalifanoClaudia Collà RuvoloSimone MorraMassimo ImbriacoFrancesco Di BelloAntonio SciutoRenato CuocoloLuigi NapolitanoRoberto La RoccaVincenzo MironeCarlo SansoneNicola LongoPublished in: Diagnostics (Basel, Switzerland) (2022)
The Prostate Imaging Reporting and Data System (PI-RADS) classification is based on a scale of values from 1 to 5. The value is assigned according to the probability that a finding is a malignant tumor (prostate carcinoma) and is calculated by evaluating the signal behavior in morphological, diffusion, and post-contrastographic sequences. A PI-RADS score of 3 is recognized as the equivocal likelihood of clinically significant prostate cancer, making its diagnosis very challenging. While PI-RADS values of 4 and 5 make biopsy necessary, it is very hard to establish whether to perform a biopsy or not in patients with a PI-RADS score 3. In recent years, machine learning algorithms have been proposed for a wide range of applications in medical fields, thanks to their ability to extract hidden information and to learn from a set of data without previous specific programming. In this paper, we evaluate machine learning approaches in detecting prostate cancer in patients with PI-RADS score 3 lesions via considering clinical-radiological characteristics. A total of 109 patients were included in this study. We collected data on body mass index (BMI), location of suspicious PI-RADS 3 lesions, serum prostate-specific antigen (PSA) level, prostate volume, PSA density, and histopathology results. The implemented classifiers exploit a patient's clinical and radiological information to generate a probability of malignancy that could help the physicians in diagnostic decisions, including the need for a biopsy.
Keyphrases
- prostate cancer
- machine learning
- radical prostatectomy
- big data
- body mass index
- deep learning
- artificial intelligence
- electronic health record
- end stage renal disease
- fine needle aspiration
- healthcare
- ultrasound guided
- primary care
- high resolution
- chronic kidney disease
- emergency department
- newly diagnosed
- oxidative stress
- physical activity
- health information
- adverse drug
- photodynamic therapy
- patient reported outcomes
- data analysis
- fluorescence imaging