Patient-based prediction algorithm of relapse after allo-HSCT for acute Leukemia and its usefulness in the decision-making process using a machine learning approach.
Kyoko FuseShun UemuraSuguru TamuraTatsuya SuwabeTakayuki KatagiriTomoyuki TanakaTakashi UshikiYasuhiko ShibasakiNaoko SatoToshio YanoTakashi KurohaShigeo HashimotoTatsuo FurukawaMiwako NaritaHirohito SoneMasayoshi MasukoPublished in: Cancer medicine (2019)
Although allogeneic hematopoietic stem cell transplantation (allo-HSCT) is a curative therapy for high-risk acute leukemia (AL), some patients still relapse. Since patients simultaneously have many prognostic factors, difficulties are associated with the construction of a patient-based prediction algorithm of relapse. The alternating decision tree (ADTree) is a successful classification method that combines decision trees with the predictive accuracy of boosting. It is a component of machine learning (ML) and has the capacity to simultaneously analyze multiple factors. Using ADTree, we attempted to construct a prediction model of leukemia relapse within 1 year of transplantation. With the model of training data (n = 148), prediction accuracy, the AUC of ROC, and the κ-statistic value were 78.4%, 0.746, and 0.508, respectively. The false positive rate (FPR) of the relapse prediction was as low as 0.134. In an evaluation of the model with validation data (n = 69), prediction accuracy, AUC, and FPR of the relapse prediction were similar at 71.0%, 0.667, and 0.216, respectively. These results suggest that the model is generalized and highly accurate. Furthermore, the output of ADTree may visualize the branch point of treatment. For example, the selection of donor types resulted in different relapse predictions. Therefore, clinicians may change treatment options by referring to the model, thereby improving outcomes. The present results indicate that ML, such as ADTree, will contribute to the decision-making process in the diversified allo-HSCT field and be useful for preventing the relapse of leukemia.
Keyphrases
- prognostic factors
- machine learning
- free survival
- decision making
- end stage renal disease
- acute myeloid leukemia
- chronic kidney disease
- deep learning
- allogeneic hematopoietic stem cell transplantation
- newly diagnosed
- big data
- ejection fraction
- artificial intelligence
- bone marrow
- palliative care
- metabolic syndrome
- case report
- skeletal muscle
- adipose tissue
- patient reported outcomes
- mesenchymal stem cells
- neural network
- rectal cancer
- weight loss
- virtual reality
- glycemic control