| Literature DB >> 35954496 |
Olga Kuczkiewicz-Siemion1,2, Kamil Sokół2, Beata Puton1, Aneta Borkowska3, Anna Szumera-Ciećkiewicz1.
Abstract
Immune checkpoint inhibitors, including those concerning programmed cell death 1 (PD-1) and its ligand (PD-L1), have revolutionised the cancer therapy approach in the past decade. However, not all patients benefit from immunotherapy equally. The prediction of patient response to this type of therapy is mainly based on conventional immunohistochemistry, which is limited by intraobserver variability, semiquantitative assessment, or single-marker-per-slide evaluation. Multiplex imaging techniques and digital image analysis are powerful tools that could overcome some issues concerning tumour-microenvironment studies. This novel approach to biomarker assessment offers a better understanding of the complicated interactions between tumour cells and their environment. Multiplex labelling enables the detection of multiple markers simultaneously and the exploration of their spatial organisation. Evaluating a variety of immune cell phenotypes and differentiating their subpopulations is possible while preserving tissue histology in most cases. Multiplexing supported by digital pathology could allow pathologists to visualise and understand every cell in a single tissue slide and provide meaning in a complex tumour-microenvironment contexture. This review aims to provide an overview of the different multiplex imaging methods and their application in PD-L1 biomarker assessment. Moreover, we discuss digital imaging techniques, with a focus on slide scanners and software.Entities:
Keywords: PD-L1; artificial intelligence; digital pathology; image analysis; immune profiling; multiplex; spectral imaging
Year: 2022 PMID: 35954496 PMCID: PMC9367614 DOI: 10.3390/cancers14153833
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.575
Figure 1The basic mechanism of each of the mIHC/IF techniques. (A) Chromogenic-based: antigen-specific primary antibody is bound to a secondary antibody, conjugated with HRP enzymes labelled with chromogen. (B) Fluorescence-based: antigen-specific primary antibody is attached to a secondary antibody conjugated with HRP enzymes. Detection is achieved using the fluorophore-labelled HRP substrate, tyramide. (C) Metal-based: a primary antibody bound to the target antigen is labelled with an isotopically pure metal-chelator tag. (D) DNA-barcoding-based: a primary antibody bound to the target antigen is labelled with a unique DNA oligonucleotide tag. Subsequently, a complementary strand of DNA coupled to a specific fluorophore is attached. Abbreviations: mIHC/IF—multiplex immunohistochemistry/immunofluorescence; HRP—horseradish peroxidase; IHC—immunohistochemistry.
Figure 2Overview of chromogenic-based mIHC: (A) After primary antibody incubation, (B) secondary antibodies labelled with polymer enzymes are conjugated. (C) The HRP or AP are reacted with an appropriate substrate bound to a chromogenic dye, such as DAB or AEC, leading to the precipitation of insoluble, coloured products. Abbreviations: HRP—horseradish peroxidase; AP—alkaline phosphatase; DAB—3,3′-diaminobenzidine; AEC—3-Amino-9-ethylcarbazole.
Figure 3Overview of tyramide signal amplification technique: After primary antibody incubation, secondary antibody labelled with HRP polymer enzymes is conjugated. Detection is achieved using the fluorophore-labelled HRP substrate, tyramide. HRP converts tyramide into a highly reactive oxidised intermediate that binds covalently to tyrosine residues present on or near the protein of interest. Abbreviations: HRP—horseradish peroxidase.
Figure 4Overview of imaging mass cytometry technique: A mixture of antibodies is labelled with isotopically pure metal-chelator tags. Each antibody binds to a single protein target. Then, the sample is ablated using a laser beam. It generates the separation of particles, which are then carried by a helium/argon mixture stream into a time-of-flight mass spectrometer, where metal ions are separated based on mass. The measured reporter signals are then mapped using the coordinates of each laser spot, and finally, an image is generated based on these data.
Figure 5Overview of multiplexed ion-beam imaging technique: Mixture of antibodies are labelled with isotopically pure metal-chelator tags. Each antibody binds to a single protein target. Then, a thin layer of the sample surface is ablated using an oxygen-based primary ion beam. Metal isotopes are released from antibodies as secondary ions, which are then transported to a time-of-flight mass spectrometer. Each unique metal ion represents a protein.
Figure 6Overview of COdetection by indEXing technique: (A) Mixture of target antibodies conjugated with unique oligonucleotide barcodes are used simultaneously to stain a tissue section. (B) Then, fluorescently labelled complementary oligonucleotides are added. (C) The visualisation is conducted via light microscopy. The targets are detected and imaged in cycles of three targets in each cycle. (D) After imaging, the reporter oligonucleotides are stripped using a stripping buffer. The cycle is repeated until all antibodies within the panel have been revealed and visualised.
Figure 7Overview of digital spatial-profiling technique: (A) Mixture of target antibodies conjugated with unique oligonucleotide barcodes through a UV photocleavable linker. (B) The oligonucleotide barcodes undergo quantitative analysis and are mapped back to tissue location to allow spatial profiling at the defined ROIs. (C) Sequential UV laser light exposure of each ROI results in the sample’s release of indexing oligonucleotide tags. (D) Then, a small pipette is robotically directed to the ROI and it samples all of the cleaved tags. (E) The counts are mapped back to tissue location, which produces a spatially resolved digital profile of analyte abundance within each ROI. Abbreviations: UV—ultraviolet; ROI—region of interest.
Figure 8Overview of InSituPlex technique: (A) Mixture of target antibodies conjugated with unique oligonucleotide barcodes are used to stain a tissue section. (B) Then, the ratio of barcodes per antibody is increased on the tissue through a process that amplifies all targets simultaneously. (C) The fluorescently tagged probes complementary to each barcode are added to the sample to hybridise and label each target. Finally, the sections are ready for fluorescence imaging.
Summary of the advantages and disadvantages of multiplex imaging technologies based on [27,44,59,61,68,76,90,91,92,93,94,95,96,97,98,99,100,101,102].
| Method | Advantages | Disadvantages |
|---|---|---|
| mIHC | Low cost and automation of staining. | Co-expression studies require careful selection of the chromogen pairs, and due to the limited amount of tissue on one slide, only a restricted number of chromogens can be used. |
| MICSSS | It is a simple and relatively affordable technique, similar to standard chromogenic immunohistochemistry. | Time-consuming method due to slow throughput. It allows the marking of up to 10 biomarkers on a single slide for 10 days (6 h per cycle). |
| TSA | It allows spatial-arrangement analysis of multiple targets within a single tissue section. | There is an elevated risk of human-error occurrence, while manual staging is difficult. However, the use of autostainers could help to overcome the problem. |
| IMC | Absence of tissue background signal. | When compared to fluorescence imaging methods, the subcellular resolution is diminished. |
| MIBI | Absence of tissue background signal. | More expensive than techniques based on fluorophore-conjugated antibodies. |
| CODEX | Can simultaneously reveal up to 60 markers in an individual tissue section. | It lacks a signal-amplification system. |
| DSP | Simultaneous measurement of all markers. | No single-cell expression data. Profiling every cell in a tissue slice at single-cell resolution is costly and tedious. |
| InSituPlex | More reproducible than other multiplexing techniques. | A small number of publications are available. |
The characteristics of the most popular software used for image analysis based on [127,132,135,138,139].
| QuPath | ImageJ | CellProfiler | Icy | |
|---|---|---|---|---|
| Type of imaging | Brightfield and fluorescence | Brightfield and fluorescence | Flow cytometry, brightfield, darkfield, or fluorescence | Brightfield and fluorescence |
| Handle to WSI | Yes | No (needs plugin) | No (needs other programs) | Yes |
| IHC analysis | Yes | Yes | Yes | Yes |
| Bio-format | Yes | Yes (with plugin) | Yes | Yes |
| Other advantages | Built-in cell segmentation and classification software, | Many plugins developed | The user-friendly interface supports 3D images | Supports 3D images, tracking moving cells |
| Disadvantages | Some options require programming skills to use | Some plugins need programming skills to use | Small number of plugins or plugins that overlap in their functionality. | Designed for researchers with software-development skills |
Overview of AI-assisted methods of digital pathology for PD-L1 assessment.
| Ref. | [ | [ | [ | [ | [ |
|---|---|---|---|---|---|
| Aim of the study | PD-L1 expression evaluation using digital-image analyses correlated with pathologist interpretation. | Domain adaptation-based deep learning for automated tumour-cell scoring on PD-L1 stained tissue sections. | Automated PD-L1 scoring applying artificial intelligence. | Automated PD-L1 scoring applying open-source software. | QuPath performance testing. |
| Type of cancer | Gastric cancer | Non-small-cell lung cancer | Head and neck squamous cell carcinoma | Non-small-cell lung cancer | Colorectal cancer |
| Method | IHC | IHC | IHC | IHC | IHC |
| Tools | FDA-cleared Aperio Imagescope IHC Membrane Image-Analysis software (ScanScope, Aperio Technologies, Vista, CA, USA) | Deep-learning-based image- | QuPath | QuPath | QuPath |
| Conclusions | No significant difference in interpretation between pathologist and digital analysis | Software replicates the pathologist’s assessment | Comparable results between human-to-human and human-to-AI interpretation. | Similar interpretation between pathologist and digital analysis | There is incipient evidence that software helps in investigating PD-L1 prognostic value in colorectal cancer |