scholarly journals Automated Comprehensive Diagnostics of Hematologic Neoplasms By Artificial Intelligence Models Using Flow Cytometric Raw Matrix Data

Blood ◽  
2021 ◽  
Vol 138 (Supplement 1) ◽  
pp. 104-104
Author(s):  
Frauke Bellos ◽  
Kim Pawelka ◽  
Elena Fortina ◽  
Manusnan Suriyalaksh ◽  
Sven Maschek ◽  
...  

Abstract Background: Artificial intelligence (AI) has steadily been entering the field supporting diagnostic workup of hematological neoplasms. Its application in flow cytometry (FC) so far mostly included visualization steps with the potential disadvantage of data reduction. Aim: To implement AI models based on raw matrix data for diagnosing main entities of hematologic neoplasms by FC. Methods: For examination of acute myeloid leukemia (AML), acute lymphoblastic leukemia (ALL), myelodysplastic syndromes (MDS), multiple myeloma (MM) and mature T- and B-cell neoplasms (T-NHL, B-NHL), six machine learning (ML) models were trained on the respective dataset consisting of uniformly analyzed samples (Navios and Cytoflex cytometers, Kaluza analysis software, Beckman Coulter, Miami, FL) resulting in ".fcs" or ".lmd" files, after being classified and diagnosed by human experts. In total 36,662 cases were included, in detail 3,961 for AML model (3,120 AML, 841 no AML), 2,931 for T-NHL (204 T-NHL, 40 NK-cell neoplasm [NK], 2,687 no NHL), 766 for ALL (364 c-ALL/Pre-B-ALL, 95 Pro-B-ALL, 55 cortical T-ALL, 34 Pre-T-ALL, 11 Pro-T-ALL, 3 mature T-ALL, 15 ETP-ALL, 189 no ALL), 7,503 for MM (1,297 MM, 1,261 consistent with MM (<10% plasma cells by FC), 3,613 consistent with monoclonal gammopathy of undetermined significance (MGUS), 1,332 no MM/MGUS), 9,664 for B-NHL (440 hairy cell leukemia (HCL), 3,771 chronic lymphocytic leukemia (CLL), 3,062 CD5-negative NHL, 1,318 CD5-positive NHL, 1,073 no NHL) and 11,837 for MDS (5,206 consistent with MDS, 6,631 no MDS). For each model, feature engineering (FE) techniques were applied. These included division of values by their maximal values, multiplication by 1024, standardization, arcsinh transformation and one- (for all models) or two- (for T-NHL and ALL) dimensional distribution of marker values using empirical cumulative distribution functions (cdfs), with the number of bins set to two for two-dimensional histograms and between 16 and 128 for one-dimensional histograms optimized for each model. Further expert-based features were applied (for T-NHL, ALL, MM, MDS) including setting positive/negative thresholds on marker values, focusing on cell populations of interest by applying clustering techniques, considering percentages of certain cell types and calculating features to capture their specific properties (e.g. distribution of markers of the subpopulations). For MM, B-NHL and MDS we also calculated covariance between key markers. Taken together, 345 features were applied for AML, 772 features for T-NHL, 339 for ALL, 1,800 for MM, 3,275 for MDS and 3,145 for B-NHL. Following ML models were used: XGBoost, weighted SVC and LinearSVC, hierarchical model (four XGBoost with SMOTE models), AutoGluon (using weighted L2 ensemble of XGBoost, LightGBMXT and CatBoost). For MDS an approach similar to manual gating strategies was implemented dividing cells into five partitions combining predictions for each partition to a final result. Model performance was assessed with stratified five-fold cross validation (training/test set 80/20% of data) repeated 10 times. Test recall (R), precision (P) and prediction probabilities (PP) were recorded. Results: Application of the ML models (see figure 1) detected AML vs no AML with average R (aR) of 99.8% and average P (aP) of 99.9% when considering cases with PP ≥0.9 covering 82% of all cases analyzed for AML. For T-NHL we saw aR of 87% and aP 86.7% for detection of NK, T-NHL and no NHL, respectively. In general PP for NK were low and thus prohibited application of a high PP threshold which would have excluded many cases. With a PP threshold of 0.9 (82% of cases) ALL model resulted in prediction of classes Pro-B-ALL, T-ALL non-cortical, c-ALL, cortical T-ALL and no ALL with aR 91.7% and aP 92.5%. MM model separated consistent with MGUS from consistent with MM and no MM (PP=0.9, 66% of cases) with aR 97.7 % and aP 93.5 %. For MDS aR was 85.6% and aP 84.7% with PP=0.9 (74% of samples). Applying PP of 0.9 (51% of cases) B-NHL model classified CD5 negative, CD5 positive, CLL, HCL and no NHL with aR 84.6% and aP 91.5%. Conclusions: Training AI models for FC using raw matrix data is feasible and yields striking R and P values for various models when restricting to cases with high PP. Besides further improving all models future work will focus on identification of additional sub-entities and application of transfer learning to achieve universal applicability to any FC data. Figure 1 Figure 1. Disclosures Haferlach: MLL Munich Leukemia Laboratory: Other: Part ownership. Haferlach: MLL Munich Leukemia Laboratory: Other: Part ownership. Kern: MLL Munich Leukemia Laboratory: Other: Part ownership.

Blood ◽  
2009 ◽  
Vol 114 (22) ◽  
pp. 4712-4712
Author(s):  
Ke Zhang ◽  
Hagop M. Kantarjian ◽  
Wanlong Ma ◽  
XI Zhang ◽  
Xiuqiang Wang ◽  
...  

Abstract Abstract 4712 The ubiquitin-proteasome system (UPS) plays a major role in cell homeostasis in normal and neoplastic states. Expression and function of the UPS system vary with the specific characteristics of individual cell types, suggesting that determination of UPS “signatures” could be useful in identifying various cell populations. Since direct analysis of cancer cells is often problematic, even in hematologic diseases, we explored the potential of using UPS signatures in plasma to differentiate between various leukemias. We first analyzed plasma UPS profiles of patients with acute myeloid leukemia (AML; n=111), acute lymphoblastic leukemia (ALL; n=29), advanced myelodysplastic syndrome (MDS; n=20), chronic lymphocytic leukemia (CLL; n=118), or chronic myeloid leukemia (CML; n=128; 46 in accelerated/blast crisis [ACC/BL], 82 in chronic phase), and 85 healthy control subjects. Plasma levels of proteasome, ubiquitin (poly-ubiquitin), and the 3 proteasome enzymatic activities (chymotrypsin-like [Ch-L], caspase-like [Cas-L], trypsin-like [Tr-L]) were measured. Specific activities were calculated by normalizing each of the 3 enzyme activities to the levels of proteasome protein in plasma (Ch-L/p, Cas-L/p, and Tr-L/p). These 8 variables were used in multivariate logistic regression models to differentiate between leukemic processes. UPS signatures provided clear differentiation between patients with a leukemic process and normal controls (AUC=0.991), using 6 different variables (Tr-L/P, Ch-L, Ch-L/p, Cas-L, Cas-L/P, ubiquitin). Distinguishing between acute (AML, ALL, MDS) and chronic (CML, CLL) processes was less efficient (AUC=0.853 using Tr-L, Tr-L/P, Cas-L/P, Ch-L/P, proteasome, Ch-L), likely due to the high proportion (36%) of CML patients in ACC/BL phase. However, UPS signatures generally yielded powerful differentiation between individual leukemias (Table). MDS was not well differentiated from AML (AUC=0.791), reflecting the significant biological overlap of these diseases. These data support the potential usefulness of the UPS profile to aid in the differential diagnosis of various leukemias. Disclosures: No relevant conflicts of interest to declare.


2017 ◽  
Author(s):  
Lei Chen ◽  
Shuang Li ◽  
Yucen Zhong ◽  
Zhenyao Shen

Abstract. Numerous research studies have been conducted to assess uncertainty in hydrological and nonpoint source pollution predictions, but few studies have considered both prediction and measurement uncertainty in the model evaluation process. In this study, the Cumulative Distribution Function Approach (CDFA) and the Monte Carlo Approach (MCA) were used to develop two new approaches for model evaluation within an uncertainty framework. For the CDFA, a new distance between the cumulative distribution functions of the predicted data and the measured data was established, whereas the MCA was proposed to address conditions with dispersed data points. These new approaches were then applied in combination with the Soil and Water Assessment Tool in the Three Gorges Region, China. Based on the results, these two new approaches provided more accurate goodness-of-fit indicators for model evaluation compared to traditional methods. The model performance worsened when the error range became larger, and the choice of probability density functions (PDFs) affected model performance, especially for non-point source (NPS) predictions. The case study showed that if the measured error is small and if the distribution can be specified, the CDFA and MCA could be extended to other model applications within an uncertain condition.


Blood ◽  
2007 ◽  
Vol 110 (11) ◽  
pp. 2351-2351
Author(s):  
Julie M. Roda ◽  
Rosa Lapalombella ◽  
Robert Baiocchi ◽  
Eugene Zhukocsky ◽  
John Desjarlais ◽  
...  

Abstract CD19 is a B cell lineage-specific transmembrane signaling protein that controls differentiation and proliferation. CD19 is an attractive therapeutic target due to its high level of expression in numerous B cell malignancies, as well as its lack of expression on non-B cells. Here we report the in vitro anti-tumor activity of a novel humanized monoclonal anti-CD19 Ab (CD19-IgG1, aka XENP5603) and its Fc engineered counterpart (XmAb™CD19, aka XENP5574). XENP5603 induced direct apoptosis in normal CD19+ B cells, but not NK cells, T cells, or monocytes, as determined by flow cytometric staining with annexin V and propidium iodide. XENP5603 also induced significant levels of apoptosis in a number of lymphoblastoid cell lines, including Ramos, Raji, 697, NALM6, and RS4;11 cells. Treatment of primary chronic lymphocytic leukemia (CLL) cells with XENP5603 induced significant cell death in all patients tested (mean, 36% apoptotic cells at 24 hours; range, 13–66%, p < 0.001). Similar apoptosis was noted in cells from a subset of patients (4 of 9) with CD19+ primary acute lymphoblastic leukemia (ALL). Apoptosis of CLL cells treated with XENP5603 was not associated with cleavage of caspase-3, caspase-8, caspase-9, or PARP, but was associated with upregulation of Bim, suggesting a caspase-independent mechanism of cell death. NK cells from normal donors exhibited high levels of ADCC in response to B cell lines coated with XENP5603. Furthermore, NK cells from CLL patients mediated significant ADCC against autologous CLL cells in the presence of XENP5603 (mean, 15% specific lysis at an E:T ratio of 25:1; range, 8–24%; p = 0.04 vs. the negative control Ab). ADCC activity was further increased in the presence of XENP5574, which has the same antigen-recognition sequences as XENP5603 but which contains two mutations in the Fc region that increase FcγRIIIa affinity (mean, 39% specific lysis at an E:T ratio of 25:1; range, 29–51%; p = 0.02 vs. the negative control Ab). ADCC mediated by either CD19 Ab was also significantly higher than that mediated by an equivalent concentration of rituximab (mean, 39% specific lysis with XENP5574 vs. 12% with rituximab; p < 0.001). ADCC in the presence of either Ab was further increased in the presence of the NK cell-activating cytokine IL-2, suggesting that these antibodies might be effectively combined with immune stimulatory adjuvants. Furthermore, NK cell ADCC against CLL cells in the presence of CD19 Abs was found to be dependent on perforin/granzyme release, as treatment with 3,4-dichloroisocoumarin (which inhibits granzyme enzymatic activity) or EGTA (which prevents release of cytotoxic vesicles) potently inhibited ADCC activity. Collectively, these studies provide evidence of the autologous innate immune-mediated cytotoxicity and direct apoptotic activity of XENP5603 and XENP5574. In addition, engineering to enhance FcγRIIIa binding enhances autologous ADCC, providing support for further pre-clinical development of XENP5574 in CD19+ malignancies, including CLL and ALL.


Blood ◽  
1987 ◽  
Vol 69 (3) ◽  
pp. 836-840 ◽  
Author(s):  
DY Mason ◽  
H Stein ◽  
J Gerdes ◽  
KA Pulford ◽  
E Ralfkiaer ◽  
...  

Two monoclonal antibodies (To15 and 4KB128) specific for the B cell- associated CD22 antigen (135,000 mol wt) are described. On immunoenzymatic analysis of cryostat tissue sections, these antibodies strongly label both mantle zone and germinal center B lymphoid cells in secondary lymphoid follicles (and also scattered extrafollicular lymphoid cells) but are unreactive with other cell types (with the exception of weak reactivity with some epithelioid histiocytes). These reactions differ from those of monoclonal antibodies B1 and B2 (anti- CD20 and CD21) but are similar to those of the pan-B antibody B4 (anti- CD19). One of the anti-CD22 antibodies (To15) has been tested extensively by immunoenzymatic labeling on greater than 350 neoplastic lymphoid and hematological samples. The CD22 antigen was found in tissue sections in most B cell-derived neoplasms, the major exceptions being myeloma (all cases negative) and a small proportion of high-grade lymphoma (6% of cases negative). In cell smears, the antigen could be found on neoplastic cells in most B cell lymphoproliferative disorders, including common acute lymphoblastic leukemia (ALL) (90% positive) and B cell chronic lymphocytic leukemia (CLL) (89% positive). We conclude that anti-CD22 antibodies are of value for identification of human B cell lymphoproliferative disorders (especially when used in conjunction with anti-CD19 antibodies). Previous reports that the CD22 antigen is absent from many B cell neoplasms are probably due to its being expressed within the cytoplasm of immature B cells rather than on their surface.


2016 ◽  
Vol 213 (6) ◽  
pp. 979-992 ◽  
Author(s):  
Finola E. Moore ◽  
Elaine G. Garcia ◽  
Riadh Lobbardi ◽  
Esha Jain ◽  
Qin Tang ◽  
...  

Hematopoiesis culminates in the production of functionally heterogeneous blood cell types. In zebrafish, the lack of cell surface antibodies has compelled researchers to use fluorescent transgenic reporter lines to label specific blood cell fractions. However, these approaches are limited by the availability of transgenic lines and fluorescent protein combinations that can be distinguished. Here, we have transcriptionally profiled single hematopoietic cells from zebrafish to define erythroid, myeloid, B, and T cell lineages. We also used our approach to identify hematopoietic stem and progenitor cells and a novel NK-lysin 4+ cell type, representing a putative cytotoxic T/NK cell. Our platform also quantified hematopoietic defects in rag2E450fs mutant fish and showed that these fish have reduced T cells with a subsequent expansion of NK-lysin 4+ cells and myeloid cells. These data suggest compensatory regulation of the innate immune system in rag2E450fs mutant zebrafish. Finally, analysis of Myc-induced T cell acute lymphoblastic leukemia showed that cells are arrested at the CD4+/CD8+ cortical thymocyte stage and that a subset of leukemia cells inappropriately reexpress stem cell genes, including bmi1 and cmyb. In total, our experiments provide new tools and biological insights into single-cell heterogeneity found in zebrafish blood and leukemia.


Blood ◽  
2006 ◽  
Vol 108 (11) ◽  
pp. 4747-4747
Author(s):  
Eugene A. Zhukovsky ◽  
Seung Chu ◽  
Matthew Bernett ◽  
Philip Hammond ◽  
Sher Karki ◽  
...  

Abstract CD19 is a pan-B cell surface receptor that is expressed from early stages of pre-B cell development through terminal differentiation into plasma cells. It is an attractive immunotherapy target for cancers of lymphoid origin since it is also expressed on the vast majority of Non-Hodgkin Lymphoma (NHL) cells. Although the anti-CD20 monoclonal antibody rituximab is efficacious for the treatment of lymphoid tumors, a growing population of rituximab-refractory patients has resulted in an unmet need for alternative B cell-specific immunotherapeutics. Engineered Fc variants that increase the affinity of IgG antibodies for Fc gamma receptors (FcγR) can dramatically enhance antibody-dependent cell-mediated cytotoxicity (ADCC). This technology has been applied to a humanized anti-CD19 antibody (XmAb™ CD19) and demonstrates ADCC against multiple cell lines representative of follicular lymphoma (FL/DOHH-2), chronic lymphocytic leukemia (CLL/MEC-1), B-cell acute lymphoblastic leukemia (B-ALL/VAL), mantle cell lymphoma (MCL/JeKo-1), hairy cell leukemia (HCL/BONNA-12), and Burkitt’s lymphoma (Raji). The ADCC activity observed is in striking contrast with a wild type IgG1 version of the antibody, which mediates little or no ADCC. Moreover, the XmAb™ CD19 activity is comparable to that of rituximab for the majority of cell lines tested and occasionally superior. Fc variants of this antibody are being evaluated in vitro for their ability to conduct ADCC by various effector cell populations, and in relevant in vivo efficacy models. In summary, these data suggest that anti-CD19 Fc variant antibodies with increased effector function could be promising as NHL immunotherapeutics, particularly for rituximab-refractory NHL.


2018 ◽  
Vol 22 (8) ◽  
pp. 4145-4154 ◽  
Author(s):  
Lei Chen ◽  
Shuang Li ◽  
Yucen Zhong ◽  
Zhenyao Shen

Abstract. Numerous studies have been conducted to assess uncertainty in hydrological and non-point source pollution predictions, but few studies have considered both prediction and measurement uncertainty in the model evaluation process. In this study, the cumulative distribution function approach (CDFA) and the Monte Carlo approach (MCA) were developed as two new approaches for model evaluation within an uncertainty condition. For the CDFA, a new distance between the cumulative distribution functions of the predicted data and the measured data was established in the model evaluation process, whereas the MCA was proposed to address conditions with dispersed data points. These new approaches were then applied in combination with the Soil and Water Assessment Tool in the Three Gorges Region, China. Based on the results, these two new approaches provided more accurate goodness-of-fit indicators for model evaluation compared to traditional methods. The model performance worsened when the error range became larger, and the choice of probability density functions (PDFs) affected model performance, especially for non-point source (NPS) predictions. The case study showed that if the measured error is small and if the distribution can be specified, the CDFA and MCA could be extended to other model evaluations within an uncertainty framework and even be used to calibrate and validate hydrological and NPS pollution (H/NPS) models.


Blood ◽  
2014 ◽  
Vol 123 (16) ◽  
pp. 2451-2459 ◽  
Author(s):  
Camille Lobry ◽  
Philmo Oh ◽  
Marc R. Mansour ◽  
A. Thomas Look ◽  
Iannis Aifantis

Abstract The Notch signaling pathway is a regulator of self-renewal and differentiation in several tissues and cell types. Notch is a binary cell-fate determinant, and its hyperactivation has been implicated as oncogenic in several cancers including breast cancer and T-cell acute lymphoblastic leukemia (T-ALL). Recently, several studies also unraveled tumor-suppressor roles for Notch signaling in different tissues, including tissues where it was before recognized as an oncogene in specific lineages. Whereas involvement of Notch as an oncogene in several lymphoid malignancies (T-ALL, B-chronic lymphocytic leukemia, splenic marginal zone lymphoma) is well characterized, there is growing evidence involving Notch signaling as a tumor suppressor in myeloid malignancies. It therefore appears that Notch signaling pathway’s oncogenic or tumor-suppressor abilities are highly context dependent. In this review, we summarize and discuss latest advances in the understanding of this dual role in hematopoiesis and the possible consequences for the treatment of hematologic malignancies.


2021 ◽  
Author(s):  
Mustafa Ghaderzadeh ◽  
Azamossadat Hosseini ◽  
Farkhondeh Asadi ◽  
Hassan Abolghasemi ◽  
Arash Roshanpour

Introduction: Acute Lymphoblastic Leukemia (ALL) is a deadly white blood cell disease that affects the human bone marrow. Detection of ALL, the most common type of leukemia, has been always riddled with complexity and difficulty in its early stages. Peripheral blood examination as a common method at the beginning of the ALL diagnosis process is a time-consuming, tedious process and greatly depends on the experts' experience, keeping up with the advances in artificial intelligence in the diagnosis process. Keeping up with the growth and development of artificial intelligence algorithms a model was developed to classify B-ALL lymphoblast cells from lymphocytes. Materials and Methods: A Fast, efficient and comprehensive model based on Deep Learning (DL) was proposed by implementing eight well-known Convolutional Neural Network (CNN) models for feature extraction on all images and evaluating in classifying B-ALL lymphoblast and Normal. After evaluating their performance, four best-performing CNN models were selected to compose an ensemble classifier, by combining the model performance of each classifier. Results: Due to the close similarity of the nuclei of cancerous and normal blood B-ALL cells, the state-of-the-art CNN models alone did not achieve acceptable performance in diagnosing these two classes and their sensitivity was low. The proposed classification model Based on the majority voting technique was adopted to combine the CNN models. The sensitivity of 99.4, the specificity of 96.7, AUC of 98.3, and accuracy of 98.5 were obtained for the proposed model. Conclusion: To classify blood cancerous cells from normal cells, the proposed method can achieve high accuracy without the intervention of the operator in cell feature determination. Thus, the DL-based model can be recommended as an extraordinary tool for the analysis of blood samples in digital laboratory equipment to assist laboratory specialists.


Blood ◽  
1987 ◽  
Vol 69 (3) ◽  
pp. 836-840 ◽  
Author(s):  
DY Mason ◽  
H Stein ◽  
J Gerdes ◽  
KA Pulford ◽  
E Ralfkiaer ◽  
...  

Abstract Two monoclonal antibodies (To15 and 4KB128) specific for the B cell- associated CD22 antigen (135,000 mol wt) are described. On immunoenzymatic analysis of cryostat tissue sections, these antibodies strongly label both mantle zone and germinal center B lymphoid cells in secondary lymphoid follicles (and also scattered extrafollicular lymphoid cells) but are unreactive with other cell types (with the exception of weak reactivity with some epithelioid histiocytes). These reactions differ from those of monoclonal antibodies B1 and B2 (anti- CD20 and CD21) but are similar to those of the pan-B antibody B4 (anti- CD19). One of the anti-CD22 antibodies (To15) has been tested extensively by immunoenzymatic labeling on greater than 350 neoplastic lymphoid and hematological samples. The CD22 antigen was found in tissue sections in most B cell-derived neoplasms, the major exceptions being myeloma (all cases negative) and a small proportion of high-grade lymphoma (6% of cases negative). In cell smears, the antigen could be found on neoplastic cells in most B cell lymphoproliferative disorders, including common acute lymphoblastic leukemia (ALL) (90% positive) and B cell chronic lymphocytic leukemia (CLL) (89% positive). We conclude that anti-CD22 antibodies are of value for identification of human B cell lymphoproliferative disorders (especially when used in conjunction with anti-CD19 antibodies). Previous reports that the CD22 antigen is absent from many B cell neoplasms are probably due to its being expressed within the cytoplasm of immature B cells rather than on their surface.


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