| Literature DB >> 34176517 |
Lamia Madaci1, Julien Colle1,2, Geoffroy Venton1,2, Laure Farnault1,2, Béatrice Loriod1,3, Régis Costello4,5.
Abstract
After decades during which the treatment of acute myeloblastic leukemia was limited to variations around a skeleton of cytarabine/anthracycline, targeted therapies appeared. These therapies, first based on monoclonal antibodies, also rely on specific inhibitors of various molecular abnormalities. A significant but modest prognosis improvement has been observed thanks to these new treatments that are limited by a high rate of relapse, due to the intrinsic chemo and immune-resistance of leukemia stem cell, together with the acquisition of these resistances by clonal evolution. Relapses are also influenced by the equilibrium between the pro or anti-tumor signals from the bone marrow stromal microenvironment and immune effectors. What should be the place of the targeted therapeutic options in light of the tumor heterogeneity inherent to leukemia and the clonal drift of which this type of tumor is capable? Novel approaches by single cell analysis and next generation sequencing precisely define clonal heterogeneity and evolution, leading to a personalized and time variable adapted treatment. Indeed, the evolution of leukemia, either spontaneous or under therapy selection pressure, is a very complex phenomenon. The model of linear evolution is to be forgotten because single cell analysis of samples at diagnosis and at relapse show that tumor escape to therapy occurs from ancestral as well as terminal clones. The determination by the single cell technique of the trajectories of the different tumor sub-populations allows the identification of clones that accumulate factors of resistance to chemo/immunotherapy ("pan-resistant clones"), making possible to choose the combinatorial agents most likely to eradicate these cells. In addition, the single cell technique identifies the nature of each cell and can analyze, on the same sample, both the tumor cells and their environment. It is thus possible to evaluate the populations of immune effectors (T-lymphocytes, natural killer cells) for the leukemia stress-induced alteration of their functions. Finally, the single cells techniques are an invaluable tool for evaluation of the measurable residual disease since not only able to quantify but also to determine the most appropriate treatment according to the sensitivity profile to immuno-chemotherapy of remaining leukemic cells.Entities:
Keywords: Acute myeloid leukemia; Clonal evolution; Drug resistance; Leukemia stem cell; Next generation sequencing; Single cell; Targeted therapy; Tumor heterogeneity
Year: 2021 PMID: 34176517 PMCID: PMC8237443 DOI: 10.1186/s40364-021-00300-0
Source DB: PubMed Journal: Biomark Res ISSN: 2050-7771
a non-exhaustive overview of most frequent mutations in AML, with their functional overlap, examples of targeted therapy and prognosis value (the effect of mutation associations on the prognosis has not been developed). *: double CEBPA mutation. NS: not significant
| Functional | Genes | Functional | Targeted | Prognostic |
|---|---|---|---|---|
Signal transduction and oncogenes | FLT3 NRAS KRAS KIT | Transcription factors | Midostaurin Gilteritinib Farnesyl transferase Tyrosine kinase inhibitors | Poor Poor NS Poor |
| Splicing mutations | SF3B1 ZRSR2 U2AF1 SRSF2 | Epigenetic modifiers | H3B-8800 GSK3326595 Gilteritinib | NS Poor Poor Poor |
| Transcription factors | RUNX1 CEBPA GATA2 BCOR BCORL | Oncogenes Epigenetic modifiers | Sorafenib tosylate Inhibitors of lysine specific demethylase 1 (LSD1) JAK/STAT inhibitors | Favorable Good* Poor Poor |
| Epigenetic modifiers | BCOR BCORL SRSF2 DNMT3A IDH1 IDH2 TET2 ASXL1 EZH2 | Splicing Transcription Tumor suppressor Chromatin modifiers | AG-120 AG-221 BI 836858 Bromodomain inhibitors | Poor Poor Poor Poor Favorable Poor Poor Poor |
| Chromatin modifiers | ASXL1 EZH2 Cohesin | Epigenetic Tumor suppressor | mTORC1/mTORC2 inhibitor Bromodomain inhibitors | Poor Poor NS |
| Tumor suppressors | TET2 TP53 WT1 | Epigenetic Chromatin modifiers | BI 836858 pevonedistat Entospletinib TP-0903 | Poor Poor Poor |
| Licensing mutations | NPM1 | entospletinib | Favorable |
Fig. 1A: leukemic cells each bearing a single drug resistance mechanism are depleted by polychemotheray, while B: leukemic cells with co-occurrence of various drug resistance mechanisms (Pgp+/MRP+/CLIP+/Gal9+/TGFb+/Bcl2+/GST+ = PAN-Resistant) hardly are eradicated by polychemotherapy, this co-occurrence in this AML sample is observed in C: 1% of leukemia blasts and D: 1% of leukemia stem cells defined as CD34 + CD38-CD123+
Fig. 2A: when no Poor Prognosis Markers (PPM) are detected, classical poly-chemotherapy may attain CR and possibly definitive AML cure, B: even in the presence of PPM, if these PPM are evenly distributed between AML blasts, conventional chemotherapy + targeted therapy against residual AML cells may allow leukemia cure
Fig. 3Even if AML cells share many different mutations, classical chemotherapy will have a debulking function associated with clonal heterogeneity reduction, thus increasing the efficiency of specifically targeted therapy
Fig. 4When co-occurrence of multidrug resistance mechanisms at LSC level, classical chemotherapy (+/− sensitizing drugs) will remain useful with the debulking and clonal heterogeneity reduction effects, still allowing the use of targeted therapy followed by passive or active immunotherapy