Deep learning predicts relapse and mutational profile risks in GIST

Deep learning from digitalised haematoxylin and eosin-stained whole-tumour slide images outperformed classical Miettinen relapse risks prediction.

 A second algorithm predicted mutations with high accuracy

GIST, the most frequent mesenchymal tumour of the GI tract, shows a variable clinical behaviour ranging from benign to malignant. Risk assessment according to the AFIP/Miettinen classification (high, intermediate, or low risk of relapse) and mutational profiling are major tools for patient management. AFIP/Miettinen classification includes size of the tumour, localisation, and mitotic count1. However, Miettinen classification comes with subjectivity (mitotic count) and is time-consuming.

In addition, mutational profiling is costly, time-consuming, and not yet available in all countries (or centres). Therefore, Dr Raul Perret (Institut Bergonié, France) and colleagues evaluated the efficacy of deep learning models to predict relapse-free survival in GIST patients and to predict mutational profiles.

Both models were based on histology, i.e. digitalised haematoxylin and eosin-stained whole tumour slide images. The researchers trained the relapse-predicting model using whole tumour slide images data from 305 patients from the Institut Bergonié and validated the model using data from 286 patients from the Léon Bérard Centre. Both cohorts had similar distribution of GIST types (localisation, TKI treatment). Likewise, training of the model for prediction of mutation profile was performed using data from 1,233 patients from the Institut Bergonié and validation on data from 238 patients from the Léon Bérard Centre. 

Miettinen intermediate and high risk for relapse classifications were further refined

The algorithm for relapse prediction proved to outperform prediction based on Miettinen classification (C-index 0.81 vs 0.76). Combining deep learning with tumour location and tumour size (Deep Miettinen), further improved C-index to 0.83. Deep Miettinen was able to stratify patients in high or low risk for relapse-free survival. In addition, the algorithm was able to dichotomise patients characterised as ‘high risk for relapse’ according to classical Miettinen into 2 groups: high versus low risk.

Likewise, the algorithm was able to dichotomise classical ‘intermediate risk’ patients into a high risk and low risk group. Histological features associated by the algorithm with ‘high risk’ are mitosis, marked nuclear atypia, high cellular density, epithelioid cell component, necrosis, and haemorrhage. Histological features associated by the algorithm with ‘low risk’ are cytoplasmic vacuolisation, low cellular density, collagenous stroma, mild nuclear atypia, and spindle cell component. 

The algorithm for prediction of the presence of mutations also performed well. The area under the curve (AUC) for predicting KIT-mutations was 0.80 in the training cohort and 0.85 in the validation cohort. AUC for predicting PDGFRA-mutations was 0.92 in both cohorts. More specific, AUC for predicting PDGFRA exon 18 D824V mutation was 0.87 in both cohorts and for predicting KIT exon 11 del 557–558 mutation was 0.69 in the training cohort and 0.76 in the validation cohort.

Deep learning model predicts mutations with high accuracy

Histological features associated by the algorithm with KIT exon 11 del 557–558 were mitotic activity and nuclear hyperchromasia; histological features associated by the algorithm with PDGFRA exon 18 D824V mutation were epithelioid or mixed cell morphology, cytoplasmic vacuolisation, myxoid stroma, and lymphoid infiltrate. 

“These results show that the deep learning model outperforms Miettinen in predicting relapse-free survival in localised untreated GIST. Using Deep Miettinen is possible to stratify existing risk groups in Miettinen. In addition, the deep learning model predicts mutations with high accuracy. Both models identified histological features associated with risk of relapse and mutational profile, respectively. However, further validation of the models is needed,” concluded Dr Perret.

References
  1. Miettinen M, et al. Semin Diagn Pathol. 2006;23:70–83.
  2. Italiano A, et al. Deep learning predicts patients’ outcome and mutations from H&E slides in gastrointestinal stromal tumor (GIST). Abstract 1484O, ESMO Congress 2022, Paris, France, 09–13 September.