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Review

A Review of the Latest Updates in Cytogenetic and Molecular Classification and Emerging Approaches in Identifying Abnormalities in Acute Lymphoblastic Leukemia

1
Laboratory of Cellular and Molecular Pathology, Faculty of Medicine and Pharmacy, Hassan II University of Casablanca, Casablanca 20360, Morocco
2
Laboratory of Medical Genetics, Ibn Rochd University Hospital, Casablanca 23040, Morocco
3
Hematology and Pediatric Oncology Department of August 20 Hospital, Ibn Rochd University Hospital, Casablanca 23040, Morocco
*
Author to whom correspondence should be addressed.
Lymphatics 2025, 3(3), 23; https://doi.org/10.3390/lymphatics3030023
Submission received: 29 October 2024 / Revised: 28 May 2025 / Accepted: 26 July 2025 / Published: 5 August 2025
(This article belongs to the Collection Acute Lymphoblastic Leukemia (ALL))

Abstract

Acute lymphoblastic leukemia (ALL) is a heterogeneous hematologic malignancy defined by the uncontrolled proliferation of lymphoid precursors. Accurate diagnosis and effective therapeutic strategies hinge on a comprehensive understanding of the genetic and molecular landscape of ALL. This review synthesizes the latest updates in cytogenetic and molecular classifications, emphasizing the 2022 World Health Organization (WHO) and International Consensus Classification (ICC) revisions. Key chromosomal alterations such as BCR::ABL1 and ETV6::RUNX1 and emerging subtypes including Ph-like ALL, DUX4, and MEF2D rearrangements are examined for their prognostic significance. Furthermore, we assess novel diagnostic tools, notably next-generation sequencing (NGS) and optical genome mapping (OGM). While NGS excels at identifying point mutations and small indels, OGM offers high-resolution structural variant detection with 100% sensitivity in multiple validation studies. These advancements enhance our grasp of leukemogenesis and pave the way for precision medicine in both B- and T-cell ALL. Ultimately, integrating these innovations into routine diagnostics is crucial for personalized patient management and improving clinical outcomes.

1. Introduction

Acute lymphoblastic leukemia (ALL) is a significant entity in hematologic malignancies, marked by the uncontrolled proliferation of lymphoid precursors in both the bone marrow and peripheral blood. While it is the most prevalent type of leukemia among children, it also occurs in a considerable number of adults. This dual prevalence underscores the importance of understanding ALL across different age groups, particularly in those younger than 15 years [1]. The etiology of ALL is complex and multifactorial, with genetic alterations playing a fundamental role in its pathogenesis.
Cytogenetic and molecular studies have emerged as indispensable tools in unraveling the genomic landscape of ALL. Cytogenetic abnormalities, involving structural and copy number variations (CNV) in chromosomes, provide critical insights into the genetic drivers of leukemogenesis [2].
The 5th edition of the WHO classification of hematolymphoid tumors and the International Consensus Classification has introduced several newly recognized entities, particularly within the context of acute lymphoblastic leukemia (ALL). This update reflects the increasing understanding of ALL’s complexity, driven by advancements in sequencing technologies enabling the identification of novel genetic fusions and mutations [3].
Subtypes such as B-ALL with BCR::ABL1-like features and ETV6::RUNX1-like characteristics have distinct clinical and prognostic implications [4].
The genomics of acute lymphoblastic leukemia (ALL) has been thoroughly explored, leading to the identification of several distinct subtypes characterized by their cytogenetic and molecular features. Each subtype exhibits unique clinical and prognostic implications.
This review focuses on the updates in genomic alterations associated with ALL, highlighting their specific molecular characteristics and their impact on disease outcomes as well as the emerging detection techniques used in this matter.
Different techniques are essential for refining prognostic evaluations and facilitating personalized treatment strategies.
However, challenges remain, such as high costs, technical complexities, and the need for specialized expertise, which can impede widespread adoption.

2. Genetic Classification and Subtypes of B-Acute Lymphoblastic Leukemia

The classification of B-acute lymphoblastic leukemia (B-ALL) has traditionally focused on recurrent genetic abnormalities, such as the BCR::ABL1 fusion (Philadelphia chromosome; Ph+), ETV6::RUNX1, TCF3::PBX1, IGH::IL3, and KMT2A rearrangements, as well as variations in ploidy, including hyperdiploidy and hypodiploidy [5]. The 5th edition classification of hematolymphoid tumors and the International Consensus Classification (ICC) have further refined the categorization of B-lymphoblastic leukemia/lymphoma, defining several distinct subtypes. These include B-lymphoblastic leukemia/lymphoma not otherwise specified (NOS), high hyperdiploidy, and iAMP21 [3]. They also identify subtypes characterized by specific genetic alterations, such as those with BCR::ABL1 fusion, BCR::ABL1-like features, KMT2A rearrangement, ETV6::RUNX1 fusion, ETV6::RUNX1-like features, TCF3::PBX1 fusion, IGH::IL3 fusion, TCF3::HLF fusion, and other defined genetic abnormalities. Each of these subtypes carries its own clinical and prognostic implications, contributing to the overall understanding and treatment of B-ALL [2] (Table 1).
B-ALL is characterized by various other genetic abnormalities, including mutations in genes such as IKZF1, which is associated with poor prognosis [6]. Changes in gene copy numbers, including amplifications and deletions, are common and can influence disease progression such as B-ALL/LBL with intrachromosomal amplification of chromosome 21 (iAMP21) [7,8].
The category of B-ALL with other defined genetic abnormalities includes potential novel entities according to the International Classification Consensus (ICC) (Table 2), including B-ALL with DUX4, MEF2D, ZNF384 or NUTM1 rearrangements; B-ALL with IG::MYC fusions; B-ALL with PAX5alt or PAX5 p.P80R abnormalities; B-ALL with UBTF::ATXN7L3/PAN3,CDX2 (“CDX2/UBTF”); and B-ALL with IKZF1 N159Y [9,10].
Table 1. Genetic alterations and prognostic factors in B-ALL.
Table 1. Genetic alterations and prognostic factors in B-ALL.
Genetic AbnormalityPrognosisAge GroupPercentage of CasesImmunophenotyping Biomarkers
High-hyperdiploidyVery favorable prognosis (>90% long-term survival)Most frequent in children25–35% of B-ALL casesTypically positive for CD10, CD19, CD22
iAMP21High relapse risk; intensive therapy improves outcomesOlder children (median age: 9 years)~2% of pediatric casesPositive for CD10, CD19
BCR::ABL1Historically poor prognosis, improved with TKIs; measurable residual disease (MRD) is a strong predictor<15 years: 2–4%, 15–39 years: 10%, 40–49 years: 25%, >50 years: 20–40%Increases with agePositive for CD34, CD19, BCR::ABL1 fusion
BCR::ABL1-like featuresHigh-risk; worse overall survival, high MRD likelihoodVaries (higher in older adults)10–15% in children, 25–30% in young adultsSimilar to BCR::ABL1, may lack IKZF1 alterations
KMT2A rearrangementGenerally poor prognosisInfants <1 year, increases with age70–80% in infantsPositive for CD10, CD19
ETV6::RUNX1Very favorable prognosis; often better outcomes than other typesMost common in children (ages 2–10)~25% of childhood casesPositive for CD10, CD19
TCF3::PBX1Intermediate to favorable prognosis with modern therapy; increased CNS relapse riskMore frequent in children~5% of pediatric casesPositive for CD10, CD19
TCF3::HLFDismal outcomes; historically considered incurableMostly children, rare in adults<1% of childhood casesPositive for CD19
ETV6::RUNX1-like featuresUndefined outcomes; small case series indicate potential for late relapsesMore common in childhood1–3% of childhood casesVariable
Adapted from [2,3,7,8].
Table 2. Potential new entities according to the International Classification Consensus in B-acute lymphoblastic leukemia (B-ALL).
Table 2. Potential new entities according to the International Classification Consensus in B-acute lymphoblastic leukemia (B-ALL).
Genetic AlterationPrognosisAge GroupPercentage of CasesImmunophenotyping BiomarkersTherapy and TreatmentDetection Techniques
DUX4 rearrangementBest outcome; 5-year event-free survival: 95% (children), 80% (adults)All ages, better in childrenVariableCD2+ (70%), CD13++, CD34++, CD38++, CD371+Standard chemotherapy; tailored based on responseNext-generation sequencing (RNA/DNA)
MEF2D rearrangementIntermediate to poor outcome; 5-year overall survival: ~70% (children), ~30% (adults)All agesRareCD10−, CD5, CD38+, cMu+Intensive chemotherapy; potential targeted therapiesRNA sequencing or RT-PCR
ZNF384 rearrangementPrognosis varies; monocytic differentiation may influence outcomesAll agesRareCD10− (73%), CD13+, CD33+, CD65−, CD15−, CD25+ (25%), myeloperoxidase− (+ in MPAL)Standard chemotherapy; consideration of lineage switchBreak-apart FISH or next-generation sequencing (RNA/DNA)
PAX5altPrognosis varies; can be associated with poorer outcomesAll ages~7.5% of B-ALL casesNot specifically definedStandard chemotherapy; depends on specific alterationsNext-generation sequencing (RNA/DNA)
PAX5 p.P80RPoorer prognosis associated with additional PAX5 alterationsAll agesRareCD2+, CD33+, CD65−, CD15−Standard chemotherapy; may involve additional therapiesDNA sequencing methods
NUTM1 rearrangementFavorable prognosis; seen in infant cases with germline KMT2A variantsMost frequent in infantsUp to 1/3 in infantsNot specifically definedSensitive to histone deacetylase inhibitorsBreak-apart FISH or RNA/DNA sequencing
MYC rearrangementPoor prognosis in adults (<20% 5-year overall survival); better in children with Burkitt-like therapyMore common in adults0.1% in children, 4.3% in adultsNot specifically definedBurkitt lymphoma therapy for children; intensive chemotherapy for adultsKaryotype or FISH analysis
Adapted from [9,10].

3. Genetic Classification and Subtypes of T-Acute Lymphoblastic Leukemia

T-cell acute lymphoblastic leukemia (T-ALL) is biologically different from B lymphoblastic leukemia (B-ALL) and exhibits distinct patterns in how the disease responds over time [11]. T-cell acute lymphoblastic leukemia (T-ALL) constitutes roughly 12% to 15% of all cases diagnosed [12], accounting for only 10% to 15% of pediatric and up to 25% of adult ALL cases [13].
Many translocations may not be identifiable through standard karyotyping and instead necessitate molecular genetic analyses for accurate detection.
For example, the TAL1 locus is deregulated in approximately 20% to 30% of T-ALL cases; however, the specific t(1;14) (p33;q11.2) translocation is only detectable by karyotyping in about 3% of instances. More frequently, cryptic insertions or deletions that occur upstream of TAL1 are responsible for its deregulation [14].
In terms of cytogenetic abnormalities, an abnormal karyotype is found in 50% to 70% of T-ALL cases. The most common recurrent abnormalities involve rearrangements of the TRA and TRD genes at 14q11.2, TRB at 7q34, and TRG at 7p14.1, often linked to a variety of partner genes. These translocations typically result in the transcriptional dysregulation of the partner gene by placing it near the regulatory regions of one of the T-cell receptor loci [15].
Key genes frequently involved in these rearrangements include T-lineage transcription factors suggested by ICC, such as TLX1, TLX3, TAL1, TAL2, LMO1, LMO2, and LYL1, and various NKX2 family members, as well as OLIG2 and several HOXA genes (Table 3) [16]. Additionally, transcription factors like MYC and MYB, along with the cytoplasmic tyrosine kinase gene LCK, may also play a role in these cytogenetic changes [17,18].
Other significant rearrangements associated with T-ALL include alterations involving MLLT10, KMT2A, ABL1, and NUP98, which contribute to the complexity of the disease’s genetic landscape [19].

4. Cytogenetic and Molecular Techniques in the Diagnosis of Acute Lymphoblastic Leukemia (ALL)

Dr. Janet D. Rowley’s identification of the t(9;22) translocation in chronic myeloid leukemia and Dr. Lore Zech’s discovery of t(8;14) in Burkitt’s lymphoma during the 1970s marked significant advancements in understanding hematologic malignancies. Since then, a variety of recurring chromosomal abnormalities—such as translocations, inversions, deletions, and both gains and losses—have been identified in these cancers [20].
These genetic alterations not only serve as important diagnostic indicators for various subtypes of leukemia and lymphoma, but they are also associated with different prognoses [21].
More recently, many of these abnormalities and gene mutations have been established as key criteria for classifying leukemia and lymphoma in authoritative guidelines, including the WHO 5th edition, the International Consensus Classification (ICC) 2022, and the European Leukemia Network (ELN) 2022 [2], playing a crucial role in diagnostic and prognostic assessments.
Many of the chromosomal abnormalities and gene mutations found in leukemia and lymphoma can be identified and analyzed through various techniques, including chromosome banding analysis, fluorescence in situ hybridization (FISH), genomic microarrays, and next-generation sequencing (NGS). The advancement of innovative genomic technologies, such as optical genome mapping (OGM), whole genome sequencing (WGS), and whole transcriptome sequencing (RNA-seq), is paving the way for the discovery of additional recurrent genetic alterations in clinical diagnostics [21].

5. What’s New in Cytogenetics and Hematology?

Optical Genome Mapping (OGM) and ALL

Optical genome mapping (OGM) is a high-resolution cytogenomic technique designed to detect structural variants (SVs) in hematologic malignancies. By utilizing ultra-high molecular weight (UHMW) DNA and fluorescent labeling, OGM achieves a label density of approximately 15 labels per 100 kb and provides genome coverage up to 300× [22]. This approach facilitates the analysis of large DNA molecules without amplification, preserving native genomic structures.
OGM consolidates the diagnostic potential of karyotyping, FISH, and chromosomal microarrays into a single assay. Studies have reported 100% sensitivity in detecting known clinically relevant aberrations, including concordance with FISH and chromosomal microarrays [23]. However, limitations exist—such as challenges in detecting centromeric or heterochromatic rearrangements (e.g., der(18;22) (q10;q10))—which were missed in certain ALL cases [24].
Comparative analyses on 52 ALL cases (Table 4) demonstrated that OGM could accurately detect balanced and unbalanced structural changes, with high specificity and positive predictive value (PPV > 80%) [24]. This technology offers a cost-effective and scalable alternative for comprehensive genomic profiling, yet further validation in large multicenter cohorts is needed.

6. What’s New in Molecular Hematology?

6.1. Next-Generation Sequencing (NGS)

Next-generation sequencing (NGS) technologies have revolutionized molecular diagnostics in hematologic malignancies. NGS enables the parallel sequencing of millions of DNA fragments, providing high-resolution detection of single-nucleotide variants (SNVs), insertions/deletions (indels), and gene fusions. Its application in ALL has elucidated numerous driver mutations (e.g., NOTCH1, TP53, IKZF1) and fusion events relevant to prognosis and therapeutic decisions [26].
Recent advances in long-read sequencing and improved bioinformatics pipelines are expanding the capabilities of NGS, allowing for accurate phasing and detection of complex variants. Integration of NGS into clinical workflows has enabled minimal residual disease (MRD) monitoring and identification of relapse-associated mutations [26].
While NGS remains a gold standard for variant detection at the base-pair level, it may be complemented by OGM for structural variant discovery, offering a comprehensive genomic assessment when used together [22,23].

6.2. Genome Reference Overview

The human reference genome has served as a cornerstone of genomic research since its initial draft was published over two decades ago. The latest version, GRCh38, offers a composite view that reflects various individual haplotypes, providing a scaffold for each chromosome. However, this version still contains approximately 210 Mb of gaps or uncharacterized regions—151 Mb of which are entirely missing and 59 Mb represented by computational simulations—accounting for around 6.7% of the overall chromosome scaffolds. These missing sequences introduce an observational bias, often described as the “streetlamp effect,” which confines studies to the limits set by the reference genome.
The introduction of GRCh37 in 2009 marked a significant step in clinical applications, but it also had its limitations, such as the absence of certain structural variations and the challenge of mapping non-reference sequences [25].
By 2013, GRCh38 was released, enhancing the reference with more accurate annotations and increased structural variation detection. Nevertheless, it still faced issues with limited clinical adoption due to its complexity and the slow validation process in laboratories [27].
In 2022, the Telomere-to-Telomere (T2T) consortium completed the T2T-CHM13, representing the first fully assembled haploid human genome. This groundbreaking sequence provides a contiguous depiction of all autosomes and chromosome X, aside from unresolved ribosomal DNA arrays. The use of T2T-CHM13 enhances genomic studies by revealing 3.7 million additional single-nucleotide polymorphisms (SNPs) in regions not aligned with GRCh38, along with a more accurate representation of copy number variants (CNVs) from the 1000 Genomes Project. Despite its advantages, such as comprehensive representation and improved analysis capabilities, T2T-CHM13 is currently primarily utilized for research rather than clinical practice [28] (Table 5).

6.3. Pangenome Information

In recent years, there has been a significant push toward adopting a pangenomic reference to mitigate reference bias. The rapid evolution of pangenomic techniques has made it increasingly viable to advocate for the integration of a pangenome into routine genomic analyses (Table 6) [29].
A “pangenome” is defined as the complete set of genomic information for a species, a concept that originated in the study of highly variable bacterial genomes. The development of pangenome data infrastructure is rooted in the high-throughput generation of high-quality phased haplotypes—segments of chromosomes that are identified based on maternal or paternal inheritance. This approach aims to enhance the current human reference genome by incorporating individuals from a variety of genomic and biogeographic backgrounds, targeting at least 350 diploid genomes that provide reference-quality haplotypes, totaling 700 haplotypes [30].
It is essential to consider the ethical, legal, and social implications (ELSI) while creating policies and protocols for inclusion, data acquisition, and stewardship throughout the research process, from participant recruitment to the dissemination of findings. To achieve the best possible phased genomes, priority should be given to long-read and long-range sequencing technologies and haplotype-aware algorithms [31].
Efforts must also be made to fill gaps in diploid genomes, particularly in complex regions, ensuring that challenging variants are accurately identified. Building a robust ecosystem of tools for pangenome reference will help in annotating genes and other genomic features.
An iterative process involving design, development, and community engagement is vital for addressing user needs effectively. Clear communication strategies will enhance understanding of the pangenome reference resource, empowering the community to report and rectify any errors. Controlled access to data will be facilitated through established genomic platforms such as the International Nucleotide Sequence Database Collaboration (INSDC), the National Center for Biotechnology Information (NCBI), UCSC Genome Browser, Ensembl, the WashU Epigenome Browser, and NHGRI’s cloud-based analysis platform, AnVIL [32].
Pangenomes can be used in hematology to improve the diagnosis and treatment of blood diseases by identifying unique variants that can be targeted with gene-based therapies; no deep studies have been undertaken in this specific area.

7. Conclusions

In conclusion, the integration of cytogenetic and molecular techniques such as FISH, PCR, and NGS have revolutionized the diagnostic landscape of acute lymphoblastic leukemia (ALL). These methodologies have significantly enhanced our ability to detect and characterize genetic abnormalities, allowing for more accurate prognostic assessments and tailored therapeutic strategies.
However, there remains a pressing need to explore further abnormalities and incorporate innovative approaches like optical genome mapping (OGM) and pangenomic methodologies. These advancements could enhance our understanding of the disease’s genetic complexities, ultimately leading to improved prognostic capabilities and more effective treatment strategies. Embracing these new technologies will be crucial for refining our approaches to diagnosis and therapy in ALL.

Author Contributions

Conceptualization, C.E.M. and S.C.; methodology, C.E.M.; validation, S.C., H.D.; writing—original draft preparation, C.E.M.; writing—review and editing, C.E.M.; supervision, S.C. and H.D. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Table 3. Genetic abnormalities associated with T-ALL/LBL: prognosis, age group, percentage of cases, and pathway.
Table 3. Genetic abnormalities associated with T-ALL/LBL: prognosis, age group, percentage of cases, and pathway.
Genetic AbnormalityPrognosisAge GroupPercentage of CasesPathway
NOTCH1 mutationsBetter outcomes associatedAll age groups>75% activationNOTCH signaling
FBXW7 mutationsBetter outcomes associatedAll age groups30% (loss-of-function)NOTCH signaling
EZH2 mutationsPoor prognosisAll age groupsRareEpigenetic regulation
SUZ12 mutationsPoor prognosisAll age groupsRareEpigenetic regulation
EED mutationsPoor prognosisAll age groupsRareEpigenetic regulation
PHF6 mutationsPoor prognosisAll age groupsRareChromatin modification
KDM6A mutationsPoor prognosisAll age groupsRareChromatin modification
IL7R mutationsPoor prognosis if mutatedAll age groupsCommon in T-ALLJAK/STAT
JAK1 mutationsPoor prognosis with activating mutationsAll age groupsCommon in T-ALLJAK/STAT
JAK3 mutationsPoor prognosis if mutatedAll age groupsRareJAK/STAT
CDKN2A deletionsPoor prognosisAll age groups~30% (deletion)Cell-cycle regulation
TAL1 rearrangementsPoor prognosisAll age groups20–30%Various pathways
TLX1 rearrangementsGenerally favorable prognosisAll age groupsCommon in translocationsVarious pathways
TLX3 rearrangementsPoor prognosisAll age groupsCommon in translocationsVarious pathways
HOXA gene rearrangementsPoor prognosisAll age groupsCommon in translocationsVarious pathways
BCL11B deletionsPoor prognosisAll age groupsRareTumor suppressor
ETV6 mutationsAssociated with ETP-ALL phenotypeTypically younger patientsRareTumor suppressor
KMT2A rearrangementsPoor prognosisAll age groupsRareVarious pathways
NUP98 rearrangementsPoor prognosisAll age groupsRareVarious pathways
Table 4. Comparison of previous diagnostic findings with OGM.
Table 4. Comparison of previous diagnostic findings with OGM.
Karyotype ResultsFISH ResultsCNV-Microarray Results [Aberrant Cell Fraction]Optical Mapping Results (SV Tool and/or CNV Tool)Aberrations Beyond Scope of Optical MappingResult
45, XY, der (18;22) (q10;q10) [2]/45, X, -Y, der (18;22) (q10;q10), +22 [6]/46, XY [2]BCR-ABL1/t(9;22) (q34;q11.2): wt
KMT2A (11q23): wt
BCR (22q11) gain [96/100]
9p21.3 (21976766_22009308) × 1 [0.4]
9p13.2 (36915132_37070373) × 3 [0.9]
11q23.3 (118358115_118470528) × 1 [0.75]
18pterp11.21 (136226_15148589) × 1 [0.9]
22q11.1qter (16888900_51197839) × 3 [0.75]
(Y) × 0 [0.6], [Loss of chrY]
9p21.3 loss: concordant (SV)
9p13.2 gain: concordant (SV)
11q23.3 loss: concordant (SV/CNVe)
18pterp11.21 loss: concordant (CNV)
22q11.1qter gain: concordant (CNVe)
ChrY loss: concordant (CNV)
centromeric breakpoints: der (18;22) (q10;q10)concordant
Adapted from [25].
Table 5. Overview of genome references and their adoption statuses.
Table 5. Overview of genome references and their adoption statuses.
Genome ReferenceYear ReleasedOrganizationAdoption Status
GRCh37/hg192009Genome Reference ConsortiumWidely adopted in clinical settings
GRCh38/hg382013Genome Reference ConsortiumLimited clinical uptake
T2T-CHM132022T2T ConsortiumPrimarily for research use
Adapted from [28].
Table 6. Status of the human pangenome reference.
Table 6. Status of the human pangenome reference.
Pangenome StatusOrganizationAdoption Status
OngoingHuman Pangenome Reference ConsortiumResearch use
AdvantagesHigh-quality assemblies from diverse populations; collaboration with T2T Consortium
Adapted from [29].
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El Mahdaoui, C.; Dehbi, H.; Cherkaoui, S. A Review of the Latest Updates in Cytogenetic and Molecular Classification and Emerging Approaches in Identifying Abnormalities in Acute Lymphoblastic Leukemia. Lymphatics 2025, 3, 23. https://doi.org/10.3390/lymphatics3030023

AMA Style

El Mahdaoui C, Dehbi H, Cherkaoui S. A Review of the Latest Updates in Cytogenetic and Molecular Classification and Emerging Approaches in Identifying Abnormalities in Acute Lymphoblastic Leukemia. Lymphatics. 2025; 3(3):23. https://doi.org/10.3390/lymphatics3030023

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El Mahdaoui, Chaimae, Hind Dehbi, and Siham Cherkaoui. 2025. "A Review of the Latest Updates in Cytogenetic and Molecular Classification and Emerging Approaches in Identifying Abnormalities in Acute Lymphoblastic Leukemia" Lymphatics 3, no. 3: 23. https://doi.org/10.3390/lymphatics3030023

APA Style

El Mahdaoui, C., Dehbi, H., & Cherkaoui, S. (2025). A Review of the Latest Updates in Cytogenetic and Molecular Classification and Emerging Approaches in Identifying Abnormalities in Acute Lymphoblastic Leukemia. Lymphatics, 3(3), 23. https://doi.org/10.3390/lymphatics3030023

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