Abstract 2594
Background
Identifying low risk of disease recurrence in localised ccRCC is key for gatekeeping in the adjuvant therapy enrolment. Uncertainty increases the number of patients required for accrual to achieve statistical power. Current scoring systems are good at identifying very low and very high risk cohorts, but have not been proved to be as effective at accurately predicting disease recurrence in intermediate groups. These patients are perhaps those likely to benefit from intervention in addition to surgery, but many may be treated unnecessarily. Using digital pathology, image analysis and machine learning we sought to stratify for risk in this intermediate category.
Methods
Definiens Tissue studio and Developer XD were utilised for object thresholding to measure tumour cell nuclear morphological features on H&E digitised images from 120 ccRCC training set from UK and 217 ccRCC validation set from Singapore. Multiplexed immunofluorescence (mIF) was performed on 120 cases to co-detect neo-vasculature and pan-T cells. An algorithm was derived to measure spatial relationships between blood vessels and T cells. A statistical model was developed by generalised linear model with spatially adaptive local smoothing algorithm, having specificity prefixed (0.8-1) plus cross validation.
Results
Replacing manual nuclear grade with AI aided tumour cell nuclear morphological features improved the specificity of Leibovich score (LS) from 0.76 to 0.86 and from 0.84 to 0.94 in training and validation sets, respectively. Moreover, tumour microenvironment (TM) parameters significantly improved the specificity up to 0.93 in the training set. The negative predictive values of both LS 5 and 6 were zero, but by applying the algorithm the specificity for LS 5 and 6 cases became 0.93 and 0.40 respectively.
Conclusions
By applying image analysis it is possible to identify lower risk for recurrence patients in a conventionally identified intermediate risk group based on routine ccRCC H&E images, and multiplexed TM features. This approach to pathology should help refine selection of patients for clinical trials and form the basis of future AI-enabled prognostic and predictive algorithms in ccRCC.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
Authors.
Funding
Renal Cancer Research Fund and NHS Lothian.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
3117 - A modified Edmonton Symptom Assessment Scale for assessing symptoms in one day chemotherapy clinic
Presenter: Anjuleta Kampitsi
Session: Poster Display session 3
Resources:
Abstract
6058 - Level of physical activity and nutritional status in cancer patients with fatigue: an exploratory cross-sectional study
Presenter: Patrick Jahn
Session: Poster Display session 3
Resources:
Abstract
1980 - Catheter related necrotizing fascitiis in haematological patients. Case report and implications for nursing
Presenter: Arianna Rosich Soteras
Session: Poster Display session 3
Resources:
Abstract
3984 - Everyday life with Long-term Chemotherapy Induced Peripheral Neuropathy among Patient in Adjuvant Treatment for Colorectal Cancer – a Multi Methods Study
Presenter: Marlene Jensen
Session: Poster Display session 3
Resources:
Abstract
2202 - Scalp cooler is effective in reducing chemotherapy-induced alopecia among breast cancer patients : a single institution experience
Presenter: Emilia Gianotti
Session: Poster Display session 3
Resources:
Abstract
5942 - Nursing management of fatigue in cancer patients: mixed methods study
Presenter: Angela Tolotti
Session: Poster Display session 3
Resources:
Abstract
2930 - Awareness of Nursing Students about the Warning Signs of Cancer
Presenter: Hatice Yakar
Session: Poster Display session 3
Resources:
Abstract
2978 - Assessment of quality of life in patients with cancer and diabetes 2 in Northern Greece.
Presenter: STYLIANI MICHALOPOULOU
Session: Poster Display session 3
Resources:
Abstract
3400 - Radiation dose variables related to the causes of skin toxicities in women with breast cancer: a study proposal
Presenter: EULALIA PUJOL
Session: Poster Display session 3
Resources:
Abstract
2156 - How should the symptoms be managed after breast cancer surgery? An example of mobile app
Presenter: AYDANUR AYDIN
Session: Poster Display session 3
Resources:
Abstract