Artificial Intelligence (AI) and Drug-Induced and Idiosyncratic Cytopenia: The Role of AI in Prevention, Prediction, and Patient Participation
Abstract
:1. Introduction
2. Methods
3. Discussion
3.1. Definition and Pathophysiology of Drug-Induced and Idiosyncratic Cytopenias
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- Immunological reactions: The drug or its metabolites may modify cellular antigens, resulting in an immune response against blood cells;
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- Direct toxicity: Some drugs can have a direct toxic effect on hematopoietic cells or bone marrow;
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- Genetic predisposition: Individual genetic variations may make some people more susceptible to developing cytopenias in response to certain drugs.
3.2. Leveraging Genetic Data and AI to Understand and Predict Drug-Induced Cytopenias
3.3. Enhancing Drug-Induced Cytopenia Prediction and Management Through AI and Machine Learning
3.4. Overview of AI in Cytopenias, Particularly Drug-Induced and Idiosyncratic Cytopenias
3.5. AI for Personalized Prevention of Cytopenias, Particularly Drug-Induced and Idiosyncratic Cytopenias
- Predicting drug side effects [16,17,18,19,20,21,22,23]: Some cytopenias induced by drug treatments are expected, like those following chemotherapies, or totally unexpected, like drug-induced and idiosyncratic cytopenias (e.g., certain antibiotics like cotrimoxazole, synthetic antithyroid drugs like carbimazole, NSAIDs, clozapine, ticlopidine, etc.) [1,2,3,4,5,6].
- In this context, AI can help anticipate these reactions by analyzing patients’ genetic profiles and suggesting safer therapeutic alternatives;
- Personalizing prevention [16,17,18,19,20,21,22,23]: With the integration of diverse data streams—including genomic profiles, microbiome composition, lifestyle habits, and soon digitomics (continuous digital health data)—artificial intelligence (AI) is increasingly able to offer tailored medical recommendations. These can range from dietary adjustments and treatment optimization to personalized monitoring schedules. In particular, AI is a promising tool in interpreting complex pharmacogenomic data, including gene variants involved in drug metabolism (such as CYP450 enzymes or UGT1A1 polymorphisms). By leveraging machine learning, AI can help predict how an individual is likely to metabolize specific drugs, thus identifying both poor and ultra-rapid metabolizers before treatment initiation—a capability that holds potential to refine therapeutic decisions and prevent adverse drug reactions [24,25,26].
3.6. Finer Prediction Thanks to Machine Learning Models
3.7. AI for Active Participation of Patients with Cytopenias, Particularly Drug-Induced and Idiosyncratic Cytopenias
- Personalized monitoring applications [16,17,18,19,20,21,22,23,24]: Connected tools can monitor patients’ biological parameters in real time and inform them of any abnormalities. For example, a progressive drop in red blood cells could be signaled via an alert on a mobile application. Dematerialized questionnaires could be made available to patients to inform them of the presence of asthenia (anemia), hemorrhagic manifestations (thrombocytopenia), fever and/or infections (neutropenia), etc.;
3.8. Other Areas of AI Development in Immuno-Hematology and Internal Medicine
3.9. Potential Issues with Using AI in Hematology
4. Conclusions: Towards an Integrated, Personalized Approach to Cytopenias
Author Contributions
Funding
Conflicts of Interest
References
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Application | Technology Used | Specific AI Contributions |
---|---|---|
Early diagnosis of diseases | Computer vision, deep learning | Early detection of abnormalities in blood smears (leukemia, lymphoma), blood cell analysis. |
Medical image analysis | AI for image analysis (MRI, CT, smears) | More accurate analysis of medical images, identification of subtle signs of hematological disease. |
Predicting response to treatment | Predictive modeling, machine learning | Personalized treatment based on patients’ genetic and clinical characteristics. |
Treatment optimization | Prediction algorithms, massive data analysis | Real-time monitoring of treatments, adjustment for side effects, improved clinical results. |
Clinical data management | Big data, AI applied to case management | Management and organization of medical data, prevention of human error in prescriptions and treatments. |
Research into new drugs | Machine learning, AI in biotechnology | Identification of new therapeutic compounds, identification of molecular targets for the treatment of blood diseases. |
Monitoring disease progression | Predictive AI, time series analysis | Long-term patient monitoring, early detection of relapse, and treatment adjustment. |
Analysis of genetic biomarkers | Supervised learning, AI for genomic analysis | Long-term patient monitoring, early detection of relapse, and treatment adjustment |
Risk prediction and prevention | Statistical modeling, predictive analysis | Predicting the risk of hematological diseases in at-risk patients, personalized prevention. |
Pathology | Technology Used | Specific AI Contributions |
---|---|---|
Anemia Hb < 13.5 g/dL in men Hb < 12.0 g/dL in women | Supervised learning, clinical data analysis, AI for biomarker analysis | Faster, more accurate diagnosis of different types of anemia (iron deficiency, sickle cell anemia, megaloblastic anemia). Personalization of treatment according to underlying causes (iron deficiency, genetic disorders, etc.). Predict responses to treatment (e.g., responses to iron supplements or EPO). |
Thrombopenia Platelets < 150 × 109/L | Machine learning, AI for laboratory test analysis, predictive modeling | Early identification of drug-induced thrombocytopenia (induced by treatments such as heparin or chemotherapy). Real-time monitoring of thrombocytopenia in patients undergoing treatment. Predict the risk of serious complications (bleeding, thrombosis) linked to thrombocytopenia. |
Drug-induced neutropenia - Neutrophils < 1.5 × 109/L - Predictable and dose-related | Predictive modeling, AI for clinical and biological data analysis | Rapid detection of drug-induced neutropenia, particularly that induced by chemotherapy or antibiotics. Personalization of preventive treatment (e.g., antibiotic prophylaxis to avoid infections). Predict the risk of serious infections and immune reactions linked to neutropenia. |
Idiosyncratic neutropenia - Neutrophils < 1.5 × 109/L - Unpredictable, unrelated to the dose or pharmacological properties of the drug | Genetic data analysis, AI in pharmacogenomics | Identification of genetic susceptibility to idiosyncratic drug-specific neutropenia. Predict the risk of serious adverse reactions and personalize therapy to avoid them. Optimizing treatment through a better understanding of individual risk profiles and drug interactions. |
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Andrès, E.; El Hassani Hajjam, A.; Maloisel, F.; Alonso-Ortiz, M.B.; Méndez-Bailón, M.; Lavigne, T.; Jannot, X.; Lorenzo-Villalba, N. Artificial Intelligence (AI) and Drug-Induced and Idiosyncratic Cytopenia: The Role of AI in Prevention, Prediction, and Patient Participation. Hematol. Rep. 2025, 17, 24. https://doi.org/10.3390/hematolrep17030024
Andrès E, El Hassani Hajjam A, Maloisel F, Alonso-Ortiz MB, Méndez-Bailón M, Lavigne T, Jannot X, Lorenzo-Villalba N. Artificial Intelligence (AI) and Drug-Induced and Idiosyncratic Cytopenia: The Role of AI in Prevention, Prediction, and Patient Participation. Hematology Reports. 2025; 17(3):24. https://doi.org/10.3390/hematolrep17030024
Chicago/Turabian StyleAndrès, Emmanuel, Amir El Hassani Hajjam, Frédéric Maloisel, Maria Belén Alonso-Ortiz, Manuel Méndez-Bailón, Thierry Lavigne, Xavier Jannot, and Noel Lorenzo-Villalba. 2025. "Artificial Intelligence (AI) and Drug-Induced and Idiosyncratic Cytopenia: The Role of AI in Prevention, Prediction, and Patient Participation" Hematology Reports 17, no. 3: 24. https://doi.org/10.3390/hematolrep17030024
APA StyleAndrès, E., El Hassani Hajjam, A., Maloisel, F., Alonso-Ortiz, M. B., Méndez-Bailón, M., Lavigne, T., Jannot, X., & Lorenzo-Villalba, N. (2025). Artificial Intelligence (AI) and Drug-Induced and Idiosyncratic Cytopenia: The Role of AI in Prevention, Prediction, and Patient Participation. Hematology Reports, 17(3), 24. https://doi.org/10.3390/hematolrep17030024