Literature DB >> 31723772

Clinical Utility of Next-generation Sequencing in the Management of Myeloproliferative Neoplasms: A Single-Center Experience.

Waleed Alduaij1, Caroline J McNamara1, Andre Schuh1, Andrea Arruda1, Mahadeo Sukhai2, Nisha Kanwar2, Mariam Thomas2, Jay Spiegel1, James A Kennedy1,3, Tracy Stockley2,4, Hubert Tsui5, Rebecca Devlin1, Hassan Sibai1, Dawn Maze1, Aaron Schimmer1, Karen Yee1, Steven Chan1, Suzanne Kamel-Reid2,4, Vikas Gupta1.   

Abstract

Although next-generation sequencing (NGS) has helped characterize the complex genomic landscape of myeloid malignancies, its clinical utility remains undefined. This has resulted in variable funding for NGS testing, limiting its accessibility. At our center, targeted sequencing (TAR-SEQ) using a 54-gene NGS myeloid panel is offered to all new patients referred for myeloid malignancies, as part of a prospective observational study. Here, we evaluated the diagnostic, prognostic, and potential therapeutic utility of clinical grade TAR-SEQ in the routine workflow of 179 patients with myeloproliferative neoplasms (MPN). Of 13 patients with triple negative (TN) MPN, who lacked driver mutations in JAK2, CALR, and MPL, TAR-SEQ confirmed clonal hematopoiesis in 8 patients. In patients with intermediate-risk myelofibrosis (MF), TAR-SEQ helped optimize clinical decisions in hematopoietic cell transplant (HCT)-eligible patients through identifying a high molecular risk (HMR) mutation profile. The presence of an HMR profile favored HCT in 9 patients with intermediate-1 risk MF. Absence of an HMR profile resulted in a delayed HCT strategy in 10 patients with intermediate-2 risk MF, 7 of which were stable at the last follow-up. Finally, TAR-SEQ identified patients with various targetable mutations in IDH1/2 (4%), spliceosome genes (28%), and EZH2 (7%). Some of these patients can be potential candidates for future targeted therapy trials. In conclusion, we have demonstrated that TAR-SEQ improves the characterization of TN MPN, can be integrated in clinical practice as an additional tool to refine decision making in HCT, and has the potential to identify candidates for future targeted therapy trials.
Copyright © 2018 the Author(s). Published by Wolters Kluwer Health, Inc. on behalf of the European Hematology Association.

Entities:  

Year:  2018        PMID: 31723772      PMCID: PMC6745993          DOI: 10.1097/HS9.0000000000000044

Source DB:  PubMed          Journal:  Hemasphere        ISSN: 2572-9241


Introduction

Over the last decade, the role of characteristic molecular markers in Philadelphia chromosome-negative (Ph−) myeloproliferative neoplasms (MPN) in both diagnosis and prognosis has been increasingly recognized.[1] Ph− MPNs are characterized by 1 of 3 classic “driver” mutations identified in the JAK2, CALR, and MPL genes. Testing for these mutations in MPN patients is now considered the diagnostic gold standard. However, a small proportion of patients (∼7–10%) with essential thrombocythemia (ET) or primary myelofibrosis (PMF) do not carry the canonical driver mutations.[2] These triple negative (TN) patients may harbor driver mutations that reside in noncanonical sites in JAK2 and MPL,[3,4] or in alternative gene loci. Indeed, in the latest revision of the World Health Organization (WHO) classification of myeloid neoplasms, the authors recommend further genetic testing in this subset of patients to confirm clonality and complement morphologic criteria.[1] The mutational profile of MPN patients demonstrated prognostic significance in retrospective studies. In PMF, mutations in ASXL1, EZH2, IDH1, IDH2, or SRSF2 predicted shorter survival and/or increased risk of leukemic transformation (LT). The presence of one or more of these mutations defined a higher risk category termed “high molecular risk” (HMR).[5,6] Mutations in TP53 were also strongly associated with LT despite their low frequency in MPN,[7,8] though TP53 is not included in the current HMR definition. Our group and others have demonstrated that the presence of an HMR profile, specifically with mutations in ASXL1 and EZH2, is associated with a shorter time-to-treatment failure (TTF) and survival in myelofibrosis (MF) patients treated with JAK1/2 inhibitor (JAKi) therapy.[9-11] These observations may have implications in optimizing the timing of hematopoietic cell transplantation (HCT) in select MF patients. Patients with a higher risk of LT could be considered for early HCT, whereas patients predicted to sustain a durable response with JAKi might benefit from a delayed HCT strategy. The data are less clear for polycythemia vera (PV) and ET, but emerging evidence suggests that both the number of mutations and the individual mutated genes may be associated with an inferior prognosis.[7,12] The adverse gene mutation profile identified in PV/ET overlaps with, but is not identical to the HMR definition in MF.[12] Advances in next-generation sequencing (NGS) technology have transformed gene sequencing into a significantly faster and cheaper assay, such that its application in routine clinical practice is now more realizable.[13] Despite the rapid development of NGS technology and the increasing evidence to support the diagnostic and prognostic utility of mutational profiling in MPN, its role in routine clinical decision making is poorly defined. Lack of data on clinical utility has resulted in variable funding of NGS testing in clinical practice. This is exemplified by variable access to NGS testing across Canada, in spite of a universal healthcare system (personal communication, Canadian MPN Group). At the Princess Margaret Cancer Centre, all new patients referred for myeloid malignancies are offered targeted sequencing (TAR-SEQ) of a panel of 54 genes implicated in myeloid malignancies, as part of a prospective, observational study. Patients can discuss the potential implications of the results on clinical management with the treating physician. In this report, we evaluate the diagnostic, prognostic, and therapeutic utilization of TAR-SEQ in a routine clinical setting for all patients referred with a suspected or confirmed diagnosis of MPN.

Patients and methods

Patient cohort

All new patients referred to the MPN/leukemia program at the Princess Margaret Cancer Centre were approached for TAR-SEQ testing as part of the Advanced Genomics in Leukemia (AGILE) prospective study. The study was approved by the University Health Network Research Ethics Board. Written informed consent was obtained from all patients, in accordance with the declaration of Helsinki. Patients have the opportunity to discuss the results and any potential impact on clinical management with their treating physician. A total of 815 patients with myeloid malignancies were approached for AGILE consent between February 1, 2015 and November 16, 2016. Two hundred eighteen of these patients were referred specifically for a suspected or proven diagnosis of MPN. One hundred seventy-nine of these fulfilled the 2008 WHO diagnostic criteria for MPN.[14] The selection process of the study cohort is outlined in Fig. 1.
Figure 1

Study patient selection. Flow diagram showing the selection of the study cohort. AGILE = Advanced Genomics in Leukemia, MPN = myeloproliferative neoplasm, MPN/MDS = myeloproliferative neoplasm/myelodysplastic overlap syndrome, TAR-SEQ = targeted sequencing, WHO = World Health Organization.

Study patient selection. Flow diagram showing the selection of the study cohort. AGILE = Advanced Genomics in Leukemia, MPN = myeloproliferative neoplasm, MPN/MDS = myeloproliferative neoplasm/myelodysplastic overlap syndrome, TAR-SEQ = targeted sequencing, WHO = World Health Organization.

Targeted DNA sequencing and variant classification

DNA samples extracted from peripheral blood (n = 159, 85%) or bone marrow (n = 29, 15%) were used for NGS testing. TAR-SEQ was performed using the TruSight Myeloid Sequencing Panel (Illumina) and run on the MiSeq Illumina platform previously validated by the University Health Network Advanced Molecular Diagnostics Laboratory.[15] Fifty-four genes implicated in myeloid malignancies were profiled (exonic hotspot regions in 39 genes and complete exonic regions in 15 genes, Supplemental Table 1) using amplicon-based library preparation as previously described.[9] Data analysis and quality assessment for calling of single-nucleotide variants and short insertions and deletions was performed using NextGene v.2.3.1 (SoftGenetics, State College, PA). Variants detected at coverage >100×, with allele frequency >5% were included for subsequent investigation. Known hotspot or clinically actionable variants detected below these thresholds were verified using orthogonal methods such as Sanger sequencing or digital droplet polymerase chain reaction (ddPCR). Detected variants were then annotated using established criteria[16] as previously reported.[9] Variants of unknown significance were excluded from the analysis of clinical utility. Resulting mutations were classified based on the involved gene as “drivers” (canonical JAK2, CALR, and MPL), HMR (ASXL1, EZH2, IDH1, IDH2, and SRSF2), and “oncogenic” (for mutations in other tested genes implicated in myeloid malignancies). Details of all annotated variants are provided in Supplemental Table 2).

Assessment of clinical utility

Patients’ TAR-SEQ results were reviewed alongside their clinical information by at least 2 physicians with expertise in MPN. Any comments made by the treating physician in the electronic medical record regarding whether TAR-SEQ influenced the clinical management were taken into account. The impact of TAR-SEQ results on the clinical management was assessed for each patient using a systematic approach. For diagnosis, it was assessed whether TAR-SEQ added evidence to support clonal hematopoiesis in the absence of other molecular or cytogenetic evidence of clonality. For HCT decision making in MF, mutation profiles were deemed high risk if they contained at least one of the previously defined HMR mutations.[5] Cases that had no clear consensus on clinical utility were reviewed in multidisciplinary MPN meetings using the same systematic approach and discrepancies were resolved by consensus.

Results

Patient characteristics and mutational landscape of MPN

The clinical characteristics of the study cohort of 179 patients with PhMPN are outlined in Table 1, including 107 patients with MF, 26 with PV, and 21 with ET. The 107 MF patients comprised 64 patients with PMF, 15 with post-PV MF (PPV-MF), and 28 with post-ET MF (PET-MF). There were 13 patients with nonclassical MPNs including 9 with MPN-unclassifiable (MPN-U), 2 with chronic neutrophilic leukemia, and 2 with hypereosinophilic syndrome. Twelve patients had post-MPN acute myeloid leukemia (post-MPN AML). Pathogenic mutations were detected in 31 out of 54 genes of the myeloid panel (Fig. 2), whereas no mutation was identified in 23 genes.
Table 1

Clinical and Laboratory Characteristics of MPN Patient Cohort

Figure 2

Mutational profile of MPN patients. Landscape diagram demonstrating pathogenic mutations identified in 31/54 sequenced genes (vertical axis). JAK2 mutations are subdivided into the canonical JAK2 V617F mutation (first row) and JAK2 exon 12 mutations (second row). Each column represents 1 patient sample grouped according to MPN subtype (horizontal axis). Each box shaded in blue represents a pathogenic mutation in the corresponding gene. Upper histogram represents the number of mutations per patient. The column on the right represents the prevalence (%) of each corresponding gene mutation in the patient cohort. ET = essential thrombocythemia, MF = myelofibrosis, MPN = myeloproliferative neoplasm, post-MPN AML = post-MPN acute myeloid leukemia.

Clinical and Laboratory Characteristics of MPN Patient Cohort Mutational profile of MPN patients. Landscape diagram demonstrating pathogenic mutations identified in 31/54 sequenced genes (vertical axis). JAK2 mutations are subdivided into the canonical JAK2 V617F mutation (first row) and JAK2 exon 12 mutations (second row). Each column represents 1 patient sample grouped according to MPN subtype (horizontal axis). Each box shaded in blue represents a pathogenic mutation in the corresponding gene. Upper histogram represents the number of mutations per patient. The column on the right represents the prevalence (%) of each corresponding gene mutation in the patient cohort. ET = essential thrombocythemia, MF = myelofibrosis, MPN = myeloproliferative neoplasm, post-MPN AML = post-MPN acute myeloid leukemia. With respect to driver mutations, JAK2 mutations were detected in 116 patients (65%). One hundred twelve of these patients carried the canonical JAK2 V617F substitution, whereas 4 carried mutations in JAK2 exon 12. All patients with exon 12 mutations in our cohort had PV. CALR mutations were detected in 32 patients (18%) with 18 patients carrying type I/type I-like mutations.[17]MPL mutations were detected in 12 patients (7%). The prevalence of JAK2 V617F, CALR, and MPL mutations within each MPN subtype is listed in Table 1. Of 163 patients with classical MPN and MPN-unclassifiable (MPN-U), 13 patients (8%) were identified as TN, with no canonical driver mutations. Of 107 patients with MF, 47 (44%) had an HMR profile based on harboring at least 1 mutation in ASXL1 (n = 36, 33%), EZH2 (n = 10, 9%), IDH1 (n = 3, 2.8%), IDH2 (n = 2, 1.8%), or SRSF2 (n = 11, 10%). Within each DIPSS risk category, HMR profile was detected in 2/11 (22%) patients with low risk, 15/37 (41%) patients intermediate-1 (Int-1) risk, 25/47 (53%) patients with intermediate-2 (Int-2), and 6/12 (50%) patients with high-risk disease. The median total number of mutations per patient in the study cohort was 2. The median number of mutations was highest in post-MPN AML with 4 mutations followed by MF with 2 mutations, and 1 mutation in both PV and ET. The relative proportion of the number of mutations detected by TAR-SEQ varied across the different MPN subtypes as shown in Fig. 3. The highest proportion of patients with ≥3 mutations were those with post-MPN AML, followed by MF, PV, and ET, respectively (P < 0.0001, Fisher exact test). Conversely, ET had the highest proportion of patients with 1 mutation, followed by PV, MF, and post-MPN AML, respectively.
Figure 3

Mutation number in different MPN subtypes. Bar chart representing the number of patients with 0 (green), 1 (blue), 2 (black), or ≥3 (red) mutations detected by TAR-SEQ across the different MPN subtypes calculated as a proportion (%) out of the total number of patients with each MPN subtype listed on the x-axis. ET = essential thrombocythemia, MF = myelofibrosis, MPN = myeloproliferative neoplasm, post-MPN AML = post-MPN acute myeloid leukemia, TAR-SEQ = targeted sequencing.

Mutation number in different MPN subtypes. Bar chart representing the number of patients with 0 (green), 1 (blue), 2 (black), or ≥3 (red) mutations detected by TAR-SEQ across the different MPN subtypes calculated as a proportion (%) out of the total number of patients with each MPN subtype listed on the x-axis. ET = essential thrombocythemia, MF = myelofibrosis, MPN = myeloproliferative neoplasm, post-MPN AML = post-MPN acute myeloid leukemia, TAR-SEQ = targeted sequencing.

Diagnostic utility of TAR-SEQ: Establishing clonal hematopoiesis in TN MPN

Of the 13 TN patients with chronic phase MPN, TAR-SEQ established evidence of clonal hematopoiesis by identifying mutations in other genes in 8 (62%) patients (Table 2). These included 4 patients with MF (2 with PMF, 2 with PET-MF) and 4 with MPN-U. The 2 patients with PMF had an HMR profile due to the presence of ASXL1 mutations, whereas the 2 patients with PET-MF had no evidence of HMR. In 7 of the total 8 patients, mutations identified by TAR-SEQ were the only source of evidence of clonality, whereas 1 patient with MPN-U (ID 188) also had abnormal cytogenetics. In the 5 remaining TN patients, TAR-SEQ did not identify any mutations in the tested genes (Table 2).
Table 2

Role of TAR-SEQ in Establishing Evidence of Clonal Hematopoiesis in Chronic Phase Triple-Negative (TN) MPN

Role of TAR-SEQ in Establishing Evidence of Clonal Hematopoiesis in Chronic Phase Triple-Negative (TN) MPN

Optimizing clinical decisions in HCT-eligible patients with intermediate (Int)-risk MF

In our cohort of 107 MF patients, 60 were HCT-eligible (56%) and 47 were HCT-ineligible (44%). The HCT-ineligible patients included 46 patients with age >70 years, prohibitive comorbidities and/or poor performance status, and 1 patient who declined receiving blood products due to religious beliefs. In HCT-eligible patients with DIPSS low- or high-risk disease, TAR-SEQ did not influence clinical decisions. HCT was recommended in all 6 patients with high-risk disease irrespective of their HMR status (present in 4 patients). All 11 patients with low-risk disease were not considered for HCT including 2 patients that had HMR mutations, though these 2 patients were monitored more closely. Of these 2 patients, 1 was lost to follow up and the other remains stable at last follow up. HMR status influenced clinical decisions in HCT-eligible patients with DIPSS Int risk, specifically in relation to HCT candidacy in Int-1 risk disease and HCT timing in Int-2 risk disease. Of the 27 patients with Int-1 risk disease, 9 (33%) had evidence of HMR mutation status, and were therefore considered for HCT (individual cases summarized in Table 3A). However, HCT was not recommended in 3 of the 9 patients because age >65 years was their only risk factor. These patients were monitored more closely, and HCT was recommended on disease progression as described in patient ID 143 (Table 3A). HCT was recommended in the remaining 6 patients, 5 of whom underwent HCT whereas 1 patient declined. Notably, 4 of the 5 patients who ultimately underwent HCT rapidly acquired additional risk factors, such as a rise in peripheral blood blasts or anemia (Table 3A). In the 18 Int-1 risk patients with no HMR on TAR-SEQ, HCT was not recommended, and these patients were considered for HCT on disease progression.
Table 3

Utility of TAR-SEQ in Optimizing Clinical Decisions in HCT-Eligible MF Patients With Int-1/2 Risk Disease

Utility of TAR-SEQ in Optimizing Clinical Decisions in HCT-Eligible MF Patients With Int-1/2 Risk Disease Of the 19 HCT-eligible patients with Int-2 risk disease, early HCT was recommended in all patients with HMR (n = 9, 47%). By contrast, the absence of HMR in 10 Int-2 risk patients (53%) contributed toward a delayed HCT strategy (individual cases summarized in Table 3B). These patients were also assessed in transplant clinics. In 2 of these patients, HCT was recommended due to the presence of additional risk factors including refractory anemia and thrombocytopenia (ID 68) and 9% peripheral blasts (ID 59). In the remaining 8 patients, HCT was delayed and patients were either observed (n = 4) or treated with non-HCT therapies such as ruxolitinib or hydroxyurea as indicated (n = 4, Table 3B). Seven patients remain stable at last follow up, whereas 1 patient under observation progressed to DIPSS high-risk disease and subsequently underwent HCT (ID 7). The approach to utilizing TAR-SEQ in optimizing clinical decisions in HCT-eligible patients with Int-risk MF is summarized in Fig. 4.
Figure 4

Role of HMR profile as identified by TAR-SEQ in optimizing HCT decisions in MF. Flow diagram showing the utility of identifying an HMR profile in optimizing HCT decisions in HCT-eligible patients with DIPSS intermediate risk myelofibrosis in our patient cohort. DIPSS = Dynamic International Prognostic Scoring System, HCT = hematopoietic cell transplant, HMR = high molecular risk, MF = myelofibrosis, Int-1/2 = intermediate-1/2 risk, TAR-SEQ = targeted sequencing, f/u = follow-up, PB = peripheral blasts.

Role of HMR profile as identified by TAR-SEQ in optimizing HCT decisions in MF. Flow diagram showing the utility of identifying an HMR profile in optimizing HCT decisions in HCT-eligible patients with DIPSS intermediate risk myelofibrosis in our patient cohort. DIPSS = Dynamic International Prognostic Scoring System, HCT = hematopoietic cell transplant, HMR = high molecular risk, MF = myelofibrosis, Int-1/2 = intermediate-1/2 risk, TAR-SEQ = targeted sequencing, f/u = follow-up, PB = peripheral blasts.

Optimizing risk stratification in PV/ET

In our cohort, 4/26 (15%) patients with PV and 2/21 (10%) patients with ET had 3 or more mutations detected by TAR-SEQ. Furthermore, 1 JAK2 V617F positive PV patient (ID 183) was found to be positive for a TP53 mutation. However, there is no consensus on changing clinical management in PV/ET patients with adverse risk genetic profiles. Therefore, it was decided to monitor these patients more closely.

Potential therapeutic utility of TAR-SEQ

Identifying candidates for potential future clinical trials of novel molecular targeted therapies

There are a number of novel molecular targeted therapies, which are currently under investigation in hematologic malignancies. These include inhibitors of the spliceosome machinery (eg, H3B-8800), metabolic inhibitors targeting IDH1 and 2, and inhibitors of EZH2, which is implicated in epigenetic modification (Table 4). In our cohort, TAR-SEQ identified multiple MPN patients with corresponding mutations. A total of 50 patients (28%) were found to have spliceosome mutations including SF3B1 (n = 14, 8%), SRSF2 (n = 18, 10%), U2AF1 (n = 23, 13%), and ZRSR2 (n = 1, 0.6%). Of these patients, 45 were in chronic phase MPN and 5 with post-MPN AML. Seven patients (4%) were identified with mutations in IDH1 or IDH2, 5 of which were in chronic phase MPN and 2 with post-MPN AML. Finally, 13 patients (7%) with chronic phase MPN were found to have EZH2 mutations: 10 with MF, 2 with MPN-U, and 1 with ET. Some of these patients may potentially be considered as candidates for future clinical trials of the novel agents currently under clinical investigation in other hematologic malignancies (Table 4).
Table 4

Potential Candidates for Future Clinical Trials of Molecular Targeted Therapies in MPN as Identified by TAR-SEQ

Potential Candidates for Future Clinical Trials of Molecular Targeted Therapies in MPN as Identified by TAR-SEQ

TAR-SEQ in the management of post-MPN AML

In the 12 patients with post-MPN AML, 4 (33%) carried mutations in TP53. Five patients (42%) could be potential candidates for future clinical trials of novel targeted therapies due to the presence of mutations in IDH1/IDH2 or in the spliceosome machinery (Table 4). Of note, 3 of the 12 patients died within 6 weeks of diagnosis, and others progressed rapidly. Clinical decisions regarding treatment with chemotherapy or hypomethylating agents were therefore already made in these patients before TAR-SEQ results were available.

Discussion

Our study demonstrates the feasibility of integrating clinical grade genomic profiling using TAR-SEQ in the routine clinical workflow of MPN patients. The ability to perform TAR-SEQ upfront on initial patient referral, along with the high consent rate (98%) enabled us to accurately represent the utility of TAR-SEQ in a “real life” clinical setting. TAR-SEQ showed clinical utility in (a) diagnosis, through verifying clonal hematopoiesis in TN patients; (b) refining clinical decisions relating to HCT in Int-risk MF, and (c) identifying potential candidates for future clinical trials of novel targeted therapies. Establishing evidence of clonal hematopoiesis through molecular assays in TN MPN has been emphasized in the latest WHO classification of myeloid neoplasms because some patients diagnosed with TN MPN may have a nonclonal disorder of hematopoiesis.[2] Furthermore, there are rare conditions that can mimic the peripheral blood abnormalities and bone marrow morphology features associated with MPN, leading to misdiagnosis. We have observed 2 cases of angiosarcoma of the liver with metastases to bone in which bone marrow biopsy was reported as PMF, and subsequent investigations including liver biopsy confirmed the diagnosis. Similar cases have been reported in the literature.[18,19] The presence of a clonal marker would therefore complement the morphological diagnosis of MPN. Conversely, absence of a clonal marker may heighten the suspicion for secondary etiologies or nonclonal disorders, warranting careful evaluation. There is no consensus on the list of genes that should be screened for mutations in TN MPN. While the WHO recommends screening for the most frequently mutated genes (ie, ASXL1, EZH2, TET2, IDH1, IDH2, SRSF2, and SF3B1), given the diversity of mutations occurring in MPN, mutations that establish clonality may occur in other infrequently mutated genes. Of the 8 patients in which TAR-SEQ demonstrated evidence of clonality in our cohort, 2 lacked the most frequent accompanying mutations recommended by the WHO (Table 3). Using an NGS-based gene panel would therefore increase the probability of identifying clonal markers in TN patients. However, despite the broad coverage of commercially available TAR-SEQ panels, there still remain 4 TN patients in our cohort with no clonal markers identified. Diagnostic work up was carefully reviewed in these patients. These patients are being investigated further in a research setting with more extensive sequencing methods such as whole genome sequencing. Current expert guidelines recommend that clinical decisions in MF should be made based on the DIPSS score, with HCT conventionally offered for patients with Int-2/high-risk disease, and selected patients with Int-1 disease.[20] However, in practice the decision to select HCT versus non-HCT-based therapy is complex and involves careful review of various patient, disease, and HCT-related factors.[21] The wider availability of JAKi, which can help in improving the symptom burden of the disease, has further complicated this decision, particularly the timing of HCT. Furthermore, patients with Int-1/2 risk disease are a heterogeneous population with respect to disease severity and risk of LT, warranting further risk stratification to optimize clinical decisions. NGS is an additional tool that can be integrated in clinical practice to predict disease-related risk as HMR positive Int-1 risk patients have a shorter survival and/or higher risk of LT making them potential candidates for early HCT (Table 3A). On the contrary, patients lacking HMR may have durable responses to JAKi therapy and can therefore be considered for delayed HCT. Our study showed that several patients with Int-2 risk disease, who lacked an HMR profile on TAR-SEQ had durable responses with JAKi therapy (Table 3B). In contrast to the heterogeneous patient population with Int-risk disease, TAR-SEQ did not impact HCT decision making in patients with DIPSS high- or low-risk disease. DIPSS high-risk patients are known to have poor prognosis with a median survival of 1.5 years even in the absence of an HMR profile,[5] and a shorter TTF with JAKi therapy (hazard ratio 2.79).[9] Therefore, HCT was recommended for all eligible patients in this risk category irrespective of HMR status. Conversely, the immediate morbidity and mortality associated with HCT likely outweighs the additional risk conferred by the HMR profile in DIPSS low-risk patients, who are typically asymptomatic with a good quality of life.[21] Thus, these patients were not considered for HCT, but patients with an HMR profile were monitored more frequently such that HCT can be considered on disease progression. Although this study provides a framework for how NGS could be used in practice to inform clinical decisions, the impact of integrating NGS testing on improving the overall outcomes in MF remains unknown, and should be interrogated in well-designed prospective studies. We have developed a framework for integrating NGS in the management of MF for further evaluation in a multicenter study through the Canadian MPN Group (Supplementary Fig. 1). Recently, 2 prognostic scores that incorporate mutations in risk stratification for MF are described.[22,23] Clinical integration of mutational profiles in routine clinical work flow will further facilitate the use of these refined scores. Another advantage of using NGS-based gene panels for risk stratification of MPN over individual gene testing is that the definition of HMR is a “moving target” that will likely further change with time as more data from mutation carriers are collected and validated in different patient cohorts. In addition to TP53, an association between adverse outcomes and mutations in several genes outside the current HMR definition including CBL, CEPBA, KIT, RUNX1, SH2B3, and TET2 have been reported in retrospective studies,[7,24] warranting further evaluation. There is no clear HMR definition in PV/ET at present. A case of particular interest in our cohort was a PV patient who carried a TP53 mutation. Long-term careful follow-up of such patients will help in establishing their clinical course. Mutational profiles may also have implications in predicting thrombosis risk, which is an essential component in the management of PV/ET. A recent study showed that mutations in DNMT3A and TET2 are associated with accelerated atherosclerosis and coronary artery disease in hematologically normal individuals with clonal hematopoiesis of indeterminate potential.[25] It is tempting to speculate that the risk of thrombotic complications in PV/ET patients carrying these mutations may be further increased. Of our 47 patients with PV/ET, 5 patients had mutations in DNMT3A and/or TET2. Future studies should examine whether these patients have an increased predisposition to cardiovascular thrombotic complications. If proven, this will have a major impact on screening strategies for cardiovascular disease in MPN patients. Identifying specific genetic mutations amenable to targeted therapy is the cornerstone of personalized medicine. In a significant proportion of our cohort, TAR-SEQ detected mutations in genes that are targets for various molecular-targeted therapies currently under clinical investigation in hematologic malignancies including inhibitors of the spliceosome machinery, IDH1, IDH2, and EZH2. There are currently no targeted therapy trials in MPN, perhaps due to the rarity of these disorders, and a small pharmaceutical market. It is hoped that these data will bring attention to MPN patients for such clinical trials. Investigating novel therapies either as monotherapy or in combination with JAKi is potentially plausible in MF patients who are unlikely to have a durable response with JAKi, or after failure of JAKi therapy. In addition, treatment outcomes for post-MPN AML patients remain unsatisfactory with no improvement in survival made in the last 20 years[26] further encouraging the investigation of novel agents in this poor prognosis patient population. Finally, it is important to emphasize practical limitations encountered when using NGS that are hindering wider implementation in routine clinical practice. The current process of variant calling is labor intensive, and there is considerable variability in variant annotation between different laboratories. Thus, there is an urgent need to develop standardized criteria for variant classification.[27] Furthermore, current somatic variant classification guidelines do not address finer nuances such as complex interactions between variants within gene pathways. Optimizing turnaround time for test results is also essential, especially in patients with post-MPN AML, who can progress rapidly before the results can be used to inform clinical decision making. The advent of artificial intelligence-enabled variant assessment technologies amenable to machine learning may potentially overcome some of these problems in the future.[28] In conclusion, this study provides evidence on potential uses of NGS in the routine clinical setting, and provides a framework for integrating NGS in the workflow of MPN. Continuous enrollment in clinical trials or prospective registries is important for further evaluation of the impact of these technologies on improving outcomes of MPN patients.
  24 in total

1.  The number of prognostically detrimental mutations and prognosis in primary myelofibrosis: an international study of 797 patients.

Authors:  P Guglielmelli; T L Lasho; G Rotunno; J Score; C Mannarelli; A Pancrazzi; F Biamonte; A Pardanani; K Zoi; A Reiter; A Duncombe; T Fanelli; D Pietra; E Rumi; C Finke; N Gangat; R P Ketterling; R A Knudson; C A Hanson; A Bosi; A Pereira; R Manfredini; F Cervantes; G Barosi; M Cazzola; N C P Cross; A M Vannucchi; A Tefferi
Journal:  Leukemia       Date:  2014-02-19       Impact factor: 11.528

2.  Targeted deep sequencing in polycythemia vera and essential thrombocythemia.

Authors:  Ayalew Tefferi; Terra L Lasho; Paola Guglielmelli; Christy M Finke; Giada Rotunno; Yoseph Elala; Annalisa Pacilli; Curtis A Hanson; Alessandro Pancrazzi; Rhett P Ketterling; Carmela Mannarelli; Daniela Barraco; Tiziana Fanelli; Animesh Pardanani; Naseema Gangat; Alessandro M Vannucchi
Journal:  Blood Adv       Date:  2016-11-22

3.  Targeted deep sequencing in primary myelofibrosis.

Authors:  Ayalew Tefferi; Terra L Lasho; Christy M Finke; Yoseph Elala; Curtis A Hanson; Rhett P Ketterling; Naseema Gangat; Animesh Pardanani
Journal:  Blood Adv       Date:  2016-11-30

4.  Impact of genomic alterations on outcomes in myelofibrosis patients undergoing JAK1/2 inhibitor therapy.

Authors:  Jay Y Spiegel; Caroline McNamara; James A Kennedy; Tony Panzarella; Andrea Arruda; Tracy Stockley; Mahadeo Sukhai; Mariam Thomas; Justyna Bartoszko; Jenny Ho; Nancy Siddiq; Dawn Maze; Aaron Schimmer; Andre Schuh; Hassan Sibai; Karen Yee; Jamie Claudio; Rebecca Devlin; Mark D Minden; Suzanne Kamel-Reid; Vikas Gupta
Journal:  Blood Adv       Date:  2017-09-08

5.  Correlation of mutation profile and response in patients with myelofibrosis treated with ruxolitinib.

Authors:  Keyur P Patel; Kate J Newberry; Rajyalakshmi Luthra; Elias Jabbour; Sherry Pierce; Jorge Cortes; Rajesh Singh; Meenakshi Mehrotra; Mark J Routbort; Madan Luthra; Taghi Manshouri; Fabio P Santos; Hagop Kantarjian; Srdan Verstovsek
Journal:  Blood       Date:  2015-06-29       Impact factor: 22.113

6.  Prognostic Mutations in Myelodysplastic Syndrome after Stem-Cell Transplantation.

Authors:  R Coleman Lindsley; Wael Saber; Brenton G Mar; Robert Redd; Tao Wang; Michael D Haagenson; Peter V Grauman; Zhen-Huan Hu; Stephen R Spellman; Stephanie J Lee; Michael R Verneris; Katharine Hsu; Katharina Fleischhauer; Corey Cutler; Joseph H Antin; Donna Neuberg; Benjamin L Ebert
Journal:  N Engl J Med       Date:  2017-02-09       Impact factor: 91.245

Review 7.  The 2008 revision of the World Health Organization (WHO) classification of myeloid neoplasms and acute leukemia: rationale and important changes.

Authors:  James W Vardiman; Jüergen Thiele; Daniel A Arber; Richard D Brunning; Michael J Borowitz; Anna Porwit; Nancy Lee Harris; Michelle M Le Beau; Eva Hellström-Lindberg; Ayalew Tefferi; Clara D Bloomfield
Journal:  Blood       Date:  2009-04-08       Impact factor: 22.113

Review 8.  The 2016 revision to the World Health Organization classification of myeloid neoplasms and acute leukemia.

Authors:  Daniel A Arber; Attilio Orazi; Robert Hasserjian; Jürgen Thiele; Michael J Borowitz; Michelle M Le Beau; Clara D Bloomfield; Mario Cazzola; James W Vardiman
Journal:  Blood       Date:  2016-04-11       Impact factor: 22.113

9.  Presence of atypical thrombopoietin receptor (MPL) mutations in triple-negative essential thrombocythemia patients.

Authors:  Xénia Cabagnols; Fabrizia Favale; Florence Pasquier; Kahia Messaoudi; Jean Philippe Defour; Jean Christophe Ianotto; Christophe Marzac; Jean Pierre Le Couédic; Nathalie Droin; Ilyas Chachoua; Remi Favier; M'boyba Khadija Diop; Valérie Ugo; Nicole Casadevall; Najet Debili; Hana Raslova; Christine Bellanné-Chantelot; Stefan N Constantinescu; Olivier Bluteau; Isabelle Plo; William Vainchenker
Journal:  Blood       Date:  2015-10-08       Impact factor: 22.113

10.  Genetic determinants of response and survival in momelotinib-treated patients with myelofibrosis.

Authors:  A Pardanani; R A Abdelrahman; C Finke; T T Lasho; K H Begna; A Al-Kali; W J Hogan; M R Litzow; C A Hanson; R P Ketterling; A Tefferi
Journal:  Leukemia       Date:  2014-11-11       Impact factor: 11.528

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  5 in total

1.  Molecular characterization of triple-negative myeloproliferative neoplasms by next-generation sequencing.

Authors:  Madhavi Maddali; Arvind Venkatraman; Uday Prakash Kulkarni; Sathya Mani; Santhosh Raj; Elanthenral Sigamani; Anu Korula; Fouzia N A; Sharon Anbumalar Lionel; Sushil Selvarajan; Marie Therese Manipadam; Aby Abraham; Biju George; Vikram Mathews; Poonkuzhali Balasubramanian
Journal:  Ann Hematol       Date:  2022-07-15       Impact factor: 4.030

2.  Concordance of Peripheral Blood and Bone Marrow Next-Generation Sequencing in Hematologic Neoplasms.

Authors:  Chayanit Jumniensuk; Alexander Nobori; Thomas Lee; T Niroshi Senaratne; Dinesh Rao; Sheeja Pullarkat
Journal:  Adv Hematol       Date:  2022-03-26

3.  Cardiovascular Disease Among Patients With AML and CHIP-Related Mutations.

Authors:  Oscar Calvillo-Argüelles; Alice Schoffel; José-Mario Capo-Chichi; Husam Abdel-Qadir; Andre Schuh; Montserrat Carrillo-Estrada; Shiying Liu; Vikas Gupta; Aaron D Schimmer; Karen Yee; Liran I Shlush; Pradeep Natarajan; Paaladinesh Thavendiranathan
Journal:  JACC CardioOncol       Date:  2022-03-15

4.  The diagnostic role of Next Generation Sequencing in uncovering isolated splenomegaly: A case report.

Authors:  Giuseppe Auteri; Daniela Bartoletti; Clara Bertuzzi; Francesco Bacci; Valeria Tonini; Lucia Catani; Nicola Vianelli; Michele Cavo; Francesca Palandri
Journal:  Hematol Rep       Date:  2021-06-21

Review 5.  Next Generation Sequencing in MPNs. Lessons from the Past and Prospects for Use as Predictors of Prognosis and Treatment Responses.

Authors:  Vibe Skov
Journal:  Cancers (Basel)       Date:  2020-08-06       Impact factor: 6.639

  5 in total

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