Saad Nadeem’s research while affiliated with Memorial Sloan Kettering Cancer Center and other places

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Publications (103)


Rethinking Histology Slide Digitization Workflows for Low-Resource Settings
  • Chapter

October 2024

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4 Reads

Talat Zehra

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Joseph Marino

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Wendy Wang

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[...]

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Saad Nadeem



An AI-Ready Multiplex Staining Dataset for Reproducible and Accurate Characterization of Tumor Immune Microenvironment

October 2023

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10 Reads

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4 Citations

Lecture Notes in Computer Science

We introduce a new AI-ready computational pathology dataset containing restained and co-registered digitized images from eight head-and-neck squamous cell carcinoma patients. Specifically, the same tumor sections were stained with the expensive multiplex immunofluorescence (mIF) assay first and then restained with cheaper multiplex immunohistochemistry (mIHC). This is a first public dataset that demonstrates the equivalence of these two staining methods which in turn allows several use cases; due to the equivalence, our cheaper mIHC staining protocol can offset the need for expensive mIF staining/scanning which requires highly-skilled lab technicians. As opposed to subjective and error-prone immune cell annotations from individual pathologists (disagreement > 50%) to drive SOTA deep learning approaches, this dataset provides objective immune and tumor cell annotations via mIF/mIHC restaining for more reproducible and accurate characterization of tumor immune microenvironment (e.g. for immunotherapy). We demonstrate the effectiveness of this dataset in three use cases: (1) IHC quantification of CD3/CD8 tumor-infiltrating lymphocytes via style transfer, (2) virtual translation of cheap mIHC stains to more expensive mIF stains, and (3) virtual tumor/immune cellular phenotyping on standard hematoxylin images. The dataset is available at https://github.com/nadeemlab/DeepLIIF.


Ki67 proliferation index in medullary thyroid carcinoma: a comparative study of multiple counting methods and validation of image analysis and deep learning platforms

September 2023

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52 Reads

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2 Citations

Histopathology

Aims The International Medullary Thyroid Carcinoma Grading System, introduced in 2022, mandates evaluation of the Ki67 proliferation index to assign a histological grade for medullary thyroid carcinoma. However, manual counting remains a tedious and time‐consuming task. Methods and results We aimed to evaluate the performance of three other counting techniques for the Ki67 index, eyeballing by a trained experienced investigator, a machine learning‐based deep learning algorithm (DeepLIIF) and an image analysis software with internal thresholding compared to the gold standard manual counting in a large cohort of 260 primarily resected medullary thyroid carcinoma. The Ki67 proliferation index generated by all three methods correlate near‐perfectly with the manual Ki67 index, with kappa values ranging from 0.884 to 0.979 and interclass correlation coefficients ranging from 0.969 to 0.983. Discrepant Ki67 results were only observed in cases with borderline manual Ki67 readings, ranging from 3 to 7%. Medullary thyroid carcinomas with a high Ki67 index (≥ 5%) determined using any of the four methods were associated with significantly decreased disease‐specific survival and distant metastasis‐free survival. Conclusions We herein validate a machine learning‐based deep‐learning platform and an image analysis software with internal thresholding to generate accurate automatic Ki67 proliferation indices in medullary thyroid carcinoma. Manual Ki67 count remains useful when facing a tumour with a borderline Ki67 proliferation index of 3–7%. In daily practice, validation of alternative evaluation methods for the Ki67 index in MTC is required prior to implementation.


Figure 2: An example of (A) identifying a gene partition based on (B) selected features in the Feature Loadings plot.
Vis-SPLIT: Interactive Hierarchical Modeling for mRNA Expression Classification
  • Preprint
  • File available

September 2023

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30 Reads

We propose an interactive visual analytics tool, Vis-SPLIT, for partitioning a population of individuals into groups with similar gene signatures. Vis-SPLIT allows users to interactively explore a dataset and exploit visual separations to build a classification model for specific cancers. The visualization components reveal gene expression and correlation to assist specific partitioning decisions, while also providing overviews for the decision model and clustered genetic signatures. We demonstrate the effectiveness of our framework through a case study and evaluate its usability with domain experts. Our results show that Vis-SPLIT can classify patients based on their genetic signatures to effectively gain insights into RNA sequencing data, as compared to an existing classification system.

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Integration of peripheral blood- and tissue-based biomarkers of response to immune checkpoint blockade in urothelial carcinoma

September 2023

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30 Reads

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3 Citations

The Journal of Pathology

As predictive biomarkers of response to immune checkpoint inhibitors (ICIs) remain a major unmet clinical need in patients with urothelial carcinoma (UC), we sought to identify tissue-based immune biomarkers of clinical benefit to ICIs using multiplex immunofluorescence and to integrate these findings with previously identified peripheral blood biomarkers of response. Fifty-five pretreatment and 12 paired on-treatment UC specimens were identified from patients treated with nivolumab with or without ipilimumab. Whole tissue sections were stained with a 12-plex mIF panel, including CD8, PD-1/CD279, PD-L1/CD274, CD68, CD3, CD4, FoxP3, TCF1/7, Ki67, LAG-3, MHC-II/HLA-DR, and pancytokeratin+SOX10 to identify over three million cells. Immune tissue densities were compared to progression-free survival (PFS) and best overall response (BOR) by RECIST version 1.1. Correlation coefficients were calculated between tissue-based and circulating immune populations. The frequency of intratumoral CD3+ LAG-3+ cells was higher in responders compared to nonresponders (p = 0.0001). LAG-3+ cellular aggregates were associated with response, including CD3+ LAG-3+ in proximity to CD3+ (p = 0.01). Exploratory multivariate modeling showed an association between intratumoral CD3+ LAG-3+ cells and improved PFS independent of prognostic clinical factors (log HR -7.0; 95% confidence interval [CI] -12.7 to -1.4), as well as established biomarkers predictive of ICI response (log HR -5.0; 95% CI -9.8 to -0.2). Intratumoral LAG-3+ immune cell populations warrant further study as a predictive biomarker of clinical benefit to ICIs. Differences in LAG-3+ lymphocyte populations across the intratumoral and peripheral compartments may provide complementary information that could inform the future development of multimodal composite biomarkers of ICI response. © 2023 The Authors. The Journal of Pathology published by John Wiley & Sons Ltd on behalf of The Pathological Society of Great Britain and Ireland.


An AI-Ready Multiplex Staining Dataset for Reproducible and Accurate Characterization of Tumor Immune Microenvironment

May 2023

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22 Reads

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2 Citations

We introduce a new AI-ready computational pathology dataset containing restained and co-registered digitized images from eight head-and-neck squamous cell carcinoma patients. Specifically, the same tumor sections were stained with the expensive multiplex immunofluorescence (mIF) assay first and then restained with cheaper multiplex immunohistochemistry (mIHC). This is a first public dataset that demonstrates the equivalence of these two staining methods which in turn allows several use cases; due to the equivalence, our cheaper mIHC staining protocol can offset the need for expensive mIF staining/scanning which requires highly-skilled lab technicians. As opposed to subjective and error-prone immune cell annotations from individual pathologists (disagreement > 50%) to drive SOTA deep learning approaches, this dataset provides objective immune and tumor cell annotations via mIF/mIHC restaining for more reproducible and accurate characterization of tumor immune microenvironment (e.g. for immunotherapy). We demonstrate the effectiveness of this dataset in three use cases: (1) IHC quantification of CD3/CD8 tumor-infiltrating lymphocytes via style transfer, (2) virtual translation of cheap mIHC stains to more expensive mIF stains, and (3) virtual tumor/immune cellular phenotyping on standard hematoxylin images. The dataset is available at \url{https://github.com/nadeemlab/DeepLIIF}.


An AI-Ready Multiplex Staining Dataset for Reproducible and Accurate Characterization of Tumor Immune Microenvironment

May 2023

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14 Reads

We introduce a new AI-ready computational pathology dataset containing restained and co-registered digitized images from eight head-and-neck squamous cell carcinoma patients. Specifically, the same tumor sections were stained with the expensive multiplex immunofluorescence (mIF) assay first and then restained with cheaper multiplex immunohistochemistry (mIHC). This is a first public dataset that demonstrates the equivalence of these two staining methods which in turn allows several use cases; due to the equivalence, our cheaper mIHC staining protocol can offset the need for expensive mIF staining/scanning which requires highly-skilled lab technicians. As opposed to subjective and error-prone immune cell annotations from individual pathologists (disagreement > 50%) to drive SOTA deep learning approaches, this dataset provides objective immune and tumor cell annotations via mIF/mIHC restaining for more reproducible and accurate characterization of tumor immune microenvironment (e.g. for immunotherapy). We demonstrate the effectiveness of this dataset in three use cases: (1) IHC quantification of CD3/CD8 tumor-infiltrating lymphocytes via style transfer, (2) virtual translation of cheap mIHC stains to more expensive mIF stains, and (3) virtual tumor/immune cellular phenotyping on standard hematoxylin images. The dataset is available at \url{https://github.com/nadeemlab/DeepLIIF}.


RMSim: controlled respiratory motion simulation on static patient scans

February 2023

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42 Reads

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2 Citations

Objective: This work aims to generate realistic anatomical deformations from static patient scans. Specifically, we present a method to generate these deformations/augmentations via deep learning driven respiratory motion simulation that provides the ground truth for validating deformable image registration (DIR) algorithms and driving more accurate deep learning based DIR. Approach: We present a novel 3D Seq2Seq deep learning respiratory motion simulator (RMSim) that learns from 4D-CT images and predicts future breathing phases given a static CT image. The predicted respiratory patterns, represented by time-varying displacement vector fields (DVFs) at different breathing phases, are modulated through auxiliary inputs of 1D breathing traces so that a larger amplitude in the trace results in more significant predicted deformation. Stacked 3D-ConvLSTMs are used to capture the spatial-temporal respiration patterns. Training loss includes a smoothness loss in the DVF and mean-squared error between the predicted and ground truth phase images. A spatial transformer deforms the static CT with the predicted DVF to generate the predicted phase image. 10-phase 4D-CTs of 140 internal patients were used to train and test RMSim. The trained RMSim was then used to augment a public DIR challenge dataset for training VoxelMorph to show the effectiveness of RMSim-generated deformation augmentation. Main results: We validated our RMSim output with both private and public benchmark datasets (healthy and cancer patients). The structure similarity index measure (SSIM) for predicted phase images was 0.92±0.04, demonstrating RMSim's potential to generate realistic respiratory motion. Moreover, the landmark registration error in a public DIR dataset was improved from 8.12±5.78mm to 6.58±6.38mm using RMSim-augmented training data. Significance: The proposed approach can be used for validating DIR algorithms as well as for patient-specific augmentations to improve deep learning DIR algorithms. The code, pretrained models, and augmented DIR validation datasets will be released at https://github.com/nadeemlab/SeqX2Y.


Citations (50)


... This advancement builds on prior work in the field, where small scale datasets were initially used for lymphocyte segmentation. Recent innovations in restaining and co-registration techniques have facilitated the creation of large-scale annotated dataset [5], allowing for enhanced training and validation of our segmentation model. Compared to conventional Fully Convolutional Network (FCN), the contextual aware neural network can effectively learn the cellular context and architecture. ...

Reference:

Lymphoid Infiltration Assessment of the Tumor Margins in H&E Slides
An AI-Ready Multiplex Staining Dataset for Reproducible and Accurate Characterization of Tumor Immune Microenvironment
  • Citing Chapter
  • October 2023

Lecture Notes in Computer Science

... In this work, it was reported that Trox was able to significantly increase the expression levels of pro-apoptotic proteins, such as Caspase3, p53 and BID, decreasing the expression of anti-apoptotic proteins, such as bcl-2 [49]. Numerous studies previously conducted on various tumor forms have highlighted the involvement of the proliferative biomarker Ki67 [50] and its correlation with the inflammatory state indicated by the activation of NF-κB [51]. Thus, the elevated expression of Ki67 in the thyroid tissue in the presence of tumor revealed that treatment with Trox in the orthotopic model was able to reduce its expression, and consequently, tumor growth. ...

Ki67 proliferation index in medullary thyroid carcinoma: a comparative study of multiple counting methods and validation of image analysis and deep learning platforms
  • Citing Article
  • September 2023

Histopathology

... Previously, some genes associated with cell proliferation were shown to be upregulated in patients with bladder cancer responding to anti-PD-1 treatment [9]. Interestingly, LAG3, which we found to be upregulated specifically on CD8+ T cells after immunotherapy, was associated with the response to anti-PD-1 immunotherapy within the tumors of patients with urothelial carcinoma [15]. This suggests that the T cell response in the blood of patients with bladder cancer can be a sensitive readout that also predicts an efficient response to immunotherapy. ...

Integration of peripheral blood- and tissue-based biomarkers of response to immune checkpoint blockade in urothelial carcinoma

The Journal of Pathology

... Sang and Ruan performed deep interpolation between EOE and EOI phases by generating spatio-temporally smooth DVF (Sang and Ruan 2023). Lee et al (2023) proposed a conditional seq2seq DVF learning architecture also using explicit smoothness penalty, requiring only one 3D CT image and a respiratory trace extracted from the position of the diaphragm. However, as previously mentioned, unsupervised learning based on smoothness constraints on the DVF may lead to poor realism, especially in the lungs (Vishnevskiy et al 2017), which is not captured by the global evaluation metrics reported in these works. ...

RMSim: controlled respiratory motion simulation on static patient scans

... In 2022, DeepLIIF was launched as an online platform for quantification of IHC scoring. WSI can be uploaded to DeepLIIF, which then virtually restains clinical IHC slides "with more informative multiplex immunofluorescence staining" [32]. This platform currently works for nuclear markers (e.g. ...

DeepLIIF: An Online Platform for Quantification of Clinical Pathology Slides
  • Citing Article
  • January 2022

Proceedings / CVPR, IEEE Computer Society Conference on Computer Vision and Pattern Recognition. IEEE Computer Society Conference on Computer Vision and Pattern Recognition

... Through this analytical validation, we wanted to showcase that the DeepLIIF model can easily be used for accurate estimate of Ki-67 index in much larger tumor coverage in low-resource settings, where scanners and commercial AI solutions are not accessible/affordable. 32,33 This analytical validation gives us the confidence and sets up the stage for much large-scale clinical validation that we are undertaking now. Moreover, DeepLIIF provides an easy solution for developing region pathologists to take advantage of advanced AI solutions where they are needed the most with declining pathologist numbers and increasing patient load. ...

DeepLIIF: An Online Platform for Quantification of Clinical Pathology Slides
  • Citing Conference Paper
  • June 2022

... This dataset is valuable for studying the significance of these features in predicting malignancy and explores the importance of spiculations/lobulations, which are reliable indicators of lung cancer malignancy, in advanced prediction algorithms. It introduces an endto-end DL model using multi-class Voxel2Mesh extension for nodule segmentation, spike classification, and malignancy prediction [36]. In contrast, the NLST dataset includes data from a randomized controlled trial screening high-risk individuals for lung cancer using low-dose CT scans. ...

CIRDataset: A Large-Scale Dataset for Clinically-Interpretable Lung Nodule Radiomics and Malignancy Prediction

Lecture Notes in Computer Science

... As schematically illustrated in Fig. 1, blue circles represent various treatment options with differing trade-offs, while red arrows indicate the algorithm's pathway toward identifying an optimal plan. A variety of planning algorithms are available today, ranging from classical techniques such as conventional trial-and-error, knowledge-based methods 1,2 , prioritized optimization [3][4][5][6][7][8] , and multi-criteria optimization (MCO) 9,10 , to modern AI-based approaches like deep learning and reinforcement learning [11][12][13][14][15] . ...

Domain knowledge driven 3D dose prediction using moment-based loss function

... Interestingly, we observed a clear transition from a "cold tumor" to a "hot tumor" according to the analysis of mMCPcounter, ssGSEA and TIDE. Several studies [40][41][42][43][44][45] have reported that chemotherapy drugs or anti-PD-1 immunotherapy could reverse the TIME by altering gene profiles in patients with different cancers. Similarly, in cancer patients treated with a combination regimen of chemotherapy and immunotherapy [46][47][48] , the regulation www.nature.com/scientificreports/ of gene expression plays a critical role in the transformation of the TIME. ...

Tumor Immune Microenvironment and Response to Neoadjuvant Chemotherapy in Hormone Receptor/HER2+ Early Stage Breast Cancer
  • Citing Article
  • April 2022

Clinical Breast Cancer

... The percentage of immunoreactive cells was rated as follows: 0 points, < 10%; 1 point, 10-50%; and 2 points, > 50%. The staining intensity was rated as follows: 0 (no staining or weak staining = light yellow), 1 (moderate staining = yellow brown) or 2 (strong staining = brown) [9]. The overall score for MIF expression was the sum of the points determined for the percentage of positively stained immunoreactive cells and the expression, and an overall score ranging from 0 to 4 points was assigned. ...

Deep Learning-Inferred Multiplex ImmunoFluorescence for Immunohistochemical Image Quantification

Nature Machine Intelligence