» Articles » PMID: 38215555

Artificial Intelligence-based Prediction Models for Acute Myeloid Leukemia Using Real-life Data: A DATAML Registry Study

Abstract

We designed artificial intelligence-based prediction models (AIPM) using 52 diagnostic variables from 3687 patients included in the DATAML registry treated with intensive chemotherapy (IC, N = 3030) or azacitidine (AZA, N = 657) for an acute myeloid leukemia (AML). A neural network called multilayer perceptron (MLP) achieved a prediction accuracy for overall survival (OS) of 68.5% and 62.1% in the IC and AZA cohorts, respectively. The Boruta algorithm could select the most important variables for prediction without decreasing accuracy. Thirteen features were retained with this algorithm in the IC cohort: age, cytogenetic risk, white blood cells count, LDH, platelet count, albumin, MPO expression, mean corpuscular volume, CD117 expression, NPM1 mutation, AML status (de novo or secondary), multilineage dysplasia and ASXL1 mutation; and 7 variables in the AZA cohort: blood blasts, serum ferritin, CD56, LDH, hemoglobin, CD13 and disseminated intravascular coagulation (DIC). We believe that AIPM could help hematologists to deal with the huge amount of data available at diagnosis, enabling them to have an OS estimation and guide their treatment choice. Our registry-based AIPM could offer a large real-life dataset with original and exhaustive features and select a low number of diagnostic features with an equivalent accuracy of prediction, more appropriate to routine practice.

Citing Articles

A Nomogram Built on Clinical Factors and CT Attenuation Scores for Predicting Treatment Response of Acute Myeloid Leukemia Patients.

Liu L, Lu W, Xiong L, Qi H, Gale R, Yin B Biomedicines. 2025; 13(1).

PMID: 39857781 PMC: 11763309. DOI: 10.3390/biomedicines13010198.


Models for the marrow: A comprehensive review of AI-based cell classification methods and malignancy detection in bone marrow aspirate smears.

Ghete T, Kock F, Pontones M, Pfrang D, Westphal M, Hofener H Hemasphere. 2024; 8(12):e70048.

PMID: 39629240 PMC: 11612571. DOI: 10.1002/hem3.70048.


Acute Myeloid Leukemia: Diagnosis and Evaluation by Flow Cytometry.

Ally F, Chen X Cancers (Basel). 2024; 16(22).

PMID: 39594810 PMC: 11592599. DOI: 10.3390/cancers16223855.


Decoding Acute Myeloid Leukemia: A Clinician's Guide to Functional Profiling.

Iyer P, Jasdanwala S, Wang Y, Bhatia K, Bhatt S Diagnostics (Basel). 2024; 14(22).

PMID: 39594226 PMC: 11593197. DOI: 10.3390/diagnostics14222560.


Acute Myeloid Leukemia in Older Patients: From New Biological Insights to Targeted Therapies.

Niscola P, Gianfelici V, Catalano G, Giovannini M, Mazzone C, Noguera N Curr Oncol. 2024; 31(11):6632-6658.

PMID: 39590121 PMC: 11592437. DOI: 10.3390/curroncol31110490.