Role of radiomics as a predictor of disease recurrence in ovarian cancer: a systematic review.
Niall J O'SullivanHugo C TemperleyMichelle T HoranWaseem KamranAlison CorrCatherine O'GormanFeras SaadehJames M MeaneyMichael E KellyPublished in: Abdominal radiology (New York) (2024)
Ovarian cancer is associated with high cancer-related mortality rate attributed to late-stage diagnosis, limited treatment options, and frequent disease recurrence. As a result, careful patient selection is important especially in setting of radical surgery. Radiomics is an emerging field in medical imaging, which may help provide vital prognostic evaluation and help patient selection for radical treatment strategies. This systematic review aims to assess the role of radiomics as a predictor of disease recurrence in ovarian cancer. A systematic search was conducted in Medline, EMBASE, and Web of Science databases. Studies meeting inclusion criteria investigating the use of radiomics to predict post-operative recurrence in ovarian cancer were included in our qualitative analysis. Study quality was assessed using the QUADAS-2 and Radiomics Quality Score tools. Six retrospective studies met the inclusion criteria, involving a total of 952 participants. Radiomic-based signatures demonstrated consistent performance in predicting disease recurrence, as evidenced by satisfactory area under the receiver operating characteristic curve values (AUC range 0.77-0.89). Radiomic-based signatures appear to good prognosticators of disease recurrence in ovarian cancer as estimated by AUC. The reviewed studies consistently reported the potential of radiomic features to enhance risk stratification and personalise treatment decisions in this complex cohort of patients. Further research is warranted to address limitations related to feature reliability, workflow heterogeneity, and the need for prospective validation studies.
Keyphrases
- systematic review
- free survival
- lymph node metastasis
- contrast enhanced
- magnetic resonance imaging
- healthcare
- public health
- case control
- case report
- machine learning
- randomized controlled trial
- squamous cell carcinoma
- deep learning
- type diabetes
- magnetic resonance
- newly diagnosed
- gene expression
- climate change
- cardiovascular disease
- ejection fraction
- artificial intelligence
- high resolution
- risk assessment
- prognostic factors
- meta analyses
- atrial fibrillation
- acute coronary syndrome
- big data
- mass spectrometry
- percutaneous coronary intervention