New Single-Cell Platform Expands View of Immune Function in Cancer Research

A newly developed single-cell sequencing approach, dubbed CIPHER-Seq, is designed to capture a more complete picture of immune cell behavior—an advance that could sharpen how researchers study responses to immunotherapy and mechanisms of resistance. The technique is described in a paper in Nature Scientific Reports.

Co-senior investigator Justin Taylor, MD, from the Sylvester Comprehensive Cancer Center at the University of Miami described the method as an effort to bridge a longstanding gap in single-cell analysis: the inability to simultaneously measure intracellular immune activity alongside gene expression and surface markers in the same cells.

“The main difference…is we’re trying to also look at the intracellular proteins,” Taylor said. “A lot of current approaches can measure proteins on the surface of the cell and RNA, but they can’t go inside the cell without disrupting the RNA.”

That limitation has been particularly consequential in immuno-oncology, where understanding immune cell function—especially cytokine production—is critical. Cytokines, which are typically secreted outside the cell, are central to defining T cell activation states and functional subtypes, but are difficult to capture alongside RNA using standard workflows.

CIPHER-Seq, or Cytokine Intracellular Protein High‑throughput Expression with RNA sequencing, addresses this by introducing a carefully optimized permeabilization step that allows antibodies to enter the cell without degrading RNA. At the same time, the protocol uses the Golgi stop reagent to trap cytokines inside cells, enabling their measurement.

“So instead of just what type of cell,” Taylor explained, “you can ask how they’re activated—are they secreting cytokines?”

Five layers of data in a single assay

The platform integrates five distinct data layers: cell surface markers, RNA sequencing, intracellular proteins, cytokines, and sample multiplexing via hashing antibodies. This multiomic approach builds on earlier technologies such as CITE-seq but extends them into intracellular territory.

Technically, the method relies on commercially available reagents and widely used sequencing platforms. Antibodies from multiple vendors can be used, and no proprietary components are required—an intentional design choice to encourage adoption.

“We’re not trying to sell it,” Taylor said. “There’s nothing proprietary about the protocol…you can buy all the reagents separately. It’s really about how we put them together and optimize the timing.”

Timing, in fact, proved critical during development. Excessive permeabilization can degrade RNA or induce cellular stress, while insufficient exposure prevents antibodies from entering the cell. The team iteratively optimized these conditions to preserve both RNA integrity and intracellular protein detection.

Reducing technical artifacts

Beyond enabling new measurements, CIPHER-Seq may also improve data quality by reducing technical artifacts. In benchmarking experiments using identical donor samples, the researchers observed that standard single-cell workflows induced higher levels of stress-related gene expression—signals that could be mistakenly attributed to biological processes.

“When we compared CIPHER-Seq to other methods…we found less stress,” Taylor said. “The same sample, same donor—just different processing. The other assays showed higher mitochondrial and metabolic stress markers.”

This finding has particular relevance for cancer studies, where cellular stress is often interpreted as a hallmark of disease or treatment response. If assay-induced stress is not accounted for, it could confound conclusions about tumor biology or immune activation.

“If you’re doing research on cancer patients getting immunotherapy, and one of your readouts is stress on the T cells,” Taylor added, “you might attribute that to the cancer—but maybe that’s from your technique.”

Applications in immuno-oncology

The primary envisioned applications for CIPHER-Seq lie in immuno-oncology, including studies of checkpoint inhibitors, CAR T-cell therapies, and bispecific antibodies. By enabling detailed profiling of T-cell subsets based on cytokine production, the method could help clarify how immune cells behave in different therapeutic contexts.

One potential use case, not yet demonstrated in the current study, would involve analyzing peripheral blood samples from patients before and after immunotherapy to compare immune activation states between responders and non-responders.

“That would be kind of the ideal use case,” Taylor said. “You could compare T cells in responders versus non-responders, or look at patients who develop resistance.”

Such analyses could ultimately help identify biomarkers of response or resistance, informing the development of targeted interventions.

“The whole point is to try to improve outcomes for patients,” he said. “If you can identify a resistant T cell marker, then you might develop a treatment targeting that.”

Why single-cell resolution matters

A key rationale for the approach is the need to detect rare immune cell populations that may drive treatment outcomes. Bulk sequencing methods average signals across many cells, potentially masking critical subsets.

“When you do bulk sequencing, it’s a mixture of all the cells,” Taylor noted. “You might miss rare subsets—and for immunotherapy, those rare cells might be very important.”

Path to clinical translation

While CIPHER-Seq is currently positioned as a research tool, Taylor sees a plausible path toward clinical application, drawing parallels to earlier sequencing technologies that were once considered impractical.

“When I started, people said whole genome sequencing would never work in patients,” he said. “And the same for RNA sequencing—that it was too unstable. But now both are routine.”

He anticipates similar skepticism around single-cell approaches but believes those barriers may also fall.

“Right now, people might say single-cell sequencing is too expensive or too technical,” Taylor said. “But I think that will change.”

For now, the team’s priority is encouraging adoption within the research community. By publishing the full protocol and relying on accessible reagents, they hope other groups will apply, refine, and extend the method.

“Our hope is that people start using it,” Taylor said. “Maybe they optimize it further for their own applications.”

 

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STAT+: Steve Ubl to step down as CEO of PhRMA

WASHINGTON — Steve Ubl is stepping down as CEO of the Pharmaceutical Research and Manufacturers of America after more than a decade leading the brand drug industry’s main trade group.

Ubl plans to depart by the end of the year and will remain in his position until a new leader is found, according to a PhRMA statement.

Ubl led the organization during tumultuous times that included the Covid-19 pandemic and aggressive political attacks on drug prices. Democrats passed a law directing Medicare to negotiate drug prices, and the Trump administration struck voluntary deals with individual drugmakers aimed at lowering U.S. prices to levels in other high-income countries. 

Continue to STAT+ to read the full story…

The Parafascicular Role in Updating Action from a Spatial to a Visual Strategy Is Driven by Its Glutamatergic Mesencephalic Locomotor Region Inputs

The ability to update actions depends on the thalamus’s parafascicular nucleus (PF); however, which PF’s inputs control this function is unknown. Here, using fiber photometry, retrograde labeling, ex vivo electrophysiology, and optogenetic manipulations, we identify the contribution of the PF and its glutamatergic inputs to the update from a spatial to a visually guided strategy in a set-shifting task conducted in mice (of either sex). Our results show the following: (1) GCaMP signals from the PF recorded along the update from a spatial to a visual strategy correlate with the probability of selecting the correct action based on a light stimulus. (2) Optogenetic inhibition of the PF during this update decreases the probability of selecting the correct action. (3) The mesencephalic locomotor region (MLR) was found to have the highest probability of synaptic connections with the PF. (4) GCaMP recordings from the MLR->PF input support it as a main driver in allowing the PF update function. (5) Inhibition of the MLR->PF connection decreases the probability of updating the contingency. These findings identify the inputs from the MLR as a crucial driver of the PF’s role in controlling the update of actions.

Corticotropin-Releasing Factor and Somatostatin Neurons in the Central Amygdala Mediate Dynamic Defensive Behaviors during Fear Extinction

Traumatic experiences can result in heightened fear responses to trauma-associated stimuli. These symptoms can be difficult to extinguish, so identifying neuronal targets for facilitating fear extinction is critical. Many studies investigating fear learning in mice measure conditioned fear via freezing, but other defensive behaviors, such as flight, can also be present during conditioning. The central amygdala (CEA) mediates conditioned freezing and flight responses via corticotropin-releasing factor-positive (CRF+) and somatostatin-positive (SOM+) neuron populations. However, it is unknown how these populations regulate changes in freezing and flight responses as fear extinction is learned. Thus, we investigated the roles of CRF+ and SOM+ CEA neurons in modulating defensive behaviors during extinction. To elicit dynamic defensive responses in male and female mice, we used a modified pavlovian conditioned flight paradigm that paired an aversive footshock with a serial compound stimulus (SCS) consisting of tone followed by white noise (WN), resulting in freezing during the tone that rapidly transitioned into flight (escape jumping and darting) during WN. We used optogenetics in CRF-Cre and SOM-Cre mice to selectively excite and inhibit CRF+ and SOM+ CEA populations during WN presentation within extinction. Within early extinction, CRF+ inhibition reduced WN-evoked jumping and led to subsequent context-specific reduction in tone-evoked freezing. During extinction, SOM+ excitation replaced early WN-evoked flight with freezing, and both SOM+ excitation and inhibition reduced WN-evoked darting. Collectively, these data demonstrate modulation of jumping and darting behaviors within extinction via CRF+ and SOM+ CEA activity. These findings suggest mechanisms of attenuating multiple defensive behaviors during extinction.

MTCL2 Is Essential for the Bipolar-to-Multipolar Transition in the Dendrite Extension of Cerebellar Granule Neurons

The dynamic regulation of neuronal polarity is essential for the formation of neural networks during brain development. Primary cultures of rodent neurons recapitulate several aspects of this polarity regulation, providing valuable insights into the molecular mechanisms underlying axon specification, dendrite formation, and neuronal migration. However, the process by which the preexisting bipolarity of migrating neurons is disrupted to form multipolar dendrites remains to be elucidated. In this study, we demonstrate that MTCL2, a microtubule-crosslinking protein associated with the Golgi apparatus, plays a crucial role in this type of polarity transformation exhibited by cerebellar granule neurons (CGNs) in mice of either sex. MTCL2 is highly expressed in CGNs and gradually accumulates in dendrites as the cells develop polarity. MTCL2 knockdown inhibited the bipolar-to-multipolar transition of dendrite extension observed in their differentiation in vitro as well as in vivo. During this transformation, the Golgi apparatus shifts from the base of the preexisting bipolar neurites to the lateral or apical side of the nucleus in the cell body. There, it forms a close association with the microtubule cage that wraps around the nucleus. The resulting upward extension of the Golgi apparatus is tightly coupled with the randomization of its position in the xy plane. Knockdown and rescue experiments demonstrated MTCL2 promotes these changes in the Golgi position in a microtubule- and Golgi-binding activity-dependent manner. These results suggest that MTCL2 promotes the development of multipolar short dendrites by sequestering the Golgi apparatus from the base of the preexisting neurite into the microtubule cage.

Early Development of Direction Selectivity in the Higher Visual Cortex

A fundamental aspect of visual motion processing is the computation of motion direction. In ferrets, as in primates, selectivity for motion direction is found both in early cortical stages like the primary visual cortex (V1) and in higher visual areas like the middle temporal area in primates and the posteromedial lateral suprasylvian (PMLS) area in ferrets. Little is known about how this critical tuning function develops in higher visual cortex. Here, by studying the development of the ferret’s motion pathway, we first reveal the surprising finding that direction selectivity (DS) develops earlier in PMLS than in V1, contrary to the areas’ hierarchical positions. Our data, collected in animals of either sex, furthermore show that while DS is sensitive to visual experience in both areas, the sensitivity profile differs between them: presentation of drifting gratings, containing the full complement of spatial and temporal cues generated by visual motion, can promote DS development in V1 and PMLS. In contrast, flashing stationary stimuli, which lack the spatial displacement of moving stimuli and only contain temporal changes, induce DS only in PMLS, not V1. Collectively our findings reveal significant deviations in PMLS development from that in V1, which will be important to account for in models of motion pathway development and of the developmental disorders that affect this pathway. The complex pattern of relative PMLS and V1 development also highlights the need to address interactions between areas in developmental research.

Base Editing Shows Early Promise for Treating Beta Thalassemia

The Chinese biotech CorrectSequence Therapeutics, also known as Correctseq, reports good results from a Phase I study of its technology involving editing a person’s hematopoietic stem cells to treat beta thalassemia.

The trial, published in Nature, included five patients with transfusion dependent beta thalassemia who were able to stop red blood cell transfusions, the standard treatment for the condition, after receiving the base-edited treatment CS-101. The participants continued to have good levels of hemoglobin with no serious side effects during follow-up.

Beta thalassemia is a rare inherited condition affecting around one in 100,000 people in the U.S. Mutations in the beta‑globin gene HBB reduce or stop production of the beta chains of hemoglobin, leading to chronic anemia that varies in its severity.

There are already several therapies on the market for beta thalassemia. The most common treatment is still regular blood transfusions to treat the anemia, but recently the genetic therapies Zynteglo, a lentiviral gene therapy developed by Bluebird Bio, and Casgevy, a CRISPR edited therapy developed by Vertex Pharmaceuticals and CRISPR Therapeutics were approved by the FDA.

Casgevy works by boosting fetal hemoglobin levels to treat the anemia seen in thalassemia patients. It uses CRISPR–Cas9 to cut both strands of DNA at the BCL11A enhancer site, which relies on error‑prone repair and can theoretically generate insertions, deletions, and larger rearrangements.

Correctseq is also aiming to raise fetal hemoglobin levels with CS-101, targeting the same site, but is only changing individual bases without making a full cut, which should reduce risks linked to double‑strand breaks, such as large deletions or chromosomal translocations.

In this study, CS-101 was given to five patients with beta thalassemia, previously treated with blood transfusions. The process involves extracting their stem cells, reactivating fetal hemoglobin production using base editing, giving the patients chemotherapy to clear existing stem cells and make way for the newly edited population, and finally injecting the patients with the edited stem cells.

All five patients were able to stop red blood cell transfusions and had maintained good levels of hemoglobin at three months. These levels stayed at a similar level through a median follow up period of 23 months. No deaths or reported cancers due to the chemotherapy treatment were observed and the safety profile so far is acceptable.

Although these results are promising, this trial is just a small initial study and further work is needed to confirm safety and efficacy of CS-101.“The planned Phase II/III trial will be crucial for evaluating a larger and more genetically diverse patient population across multiple centers,” write the authors.

“Extended follow-up will be required to enable comprehensive analyses of chimerism and clonality, which will facilitate more definitive assessment of long-term safety, engraftment dynamics and clinical benefit.”

One Correctseq’s main competitors is U.S.-based Beam Therapeutics, which is developing a similar base edited treatment. Beam is behind Correctseq in developing its edited therapy for beta thalassemia, but ahead with its therapy for sickle cell disease, something Correctseq are also targeting using a similar pathway.

The Chinese biotech industry is currently on an upward trajectory. Correctseq is one of many Chinese biotech companies currently working to produce competitors for gene therapies like Casgevy and Zynteglo at a more affordable price than those seen in the U.S.

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Forecasting Protein Aggregation with an Improved Algorithm

A new, improved algorithm for studying protein aggregation could help biologics manufacturers design better-performing products with less experimental effort. The software, developed by scientists based in Barcelona, offers the ability to analyze the aggregation of proteins drawn from the AlphaFold protein structure database, as well as helping companies identify more soluble alternatives.

“Protein aggregation is a bottleneck in the production and manufacturing of biologics,” explains Salvador Ventura, PhD, a professor in the department of biochemistry and molecular biology at the Autonomous University of Barcelona (UAB).

The problem, he explains, is that many proteins used as therapies evolved to be soluble at the concentrations found in the human body. But therapeutics, such as antibodies, are produced in as high a concentration as possible.

“We want the product to deliver the maximum dose with the minimum amount of injection,” he says. “But proteins aren’t designed to be soluble at these concentrations, and their aggregation causes different effects.”

These can include the patient’s immune system reacting negatively or the aggregated product ceasing to work.

To overcome this problem, Ventura says, companies and labs try to forecast protein aggregation, usually experimentally with high-throughput combinational assays. But these approaches are not convenient for startups or small spinoff companies.

A computational approach, such as his algorithm, now in its fourth generation, can help these companies predict and design around protein aggregation.

It offers the ability to draw protein structures from AlphaFold to analyze likely protein aggregation using simulations of molecular dynamics. Users, he says, can also choose to mutate selected parts of the protein, identify other proteins in the same family, and even look at the possible impact of pH on solubility.

“Our lab is both computational and experimental, so most of the designs we’ve made, we’ve already proved by experiment,” Ventura says.

Limitations include the scarcity of high-quality experimental data available to train the algorithm, he explains.

Going forward, the team intends to model which solution and formulation conditions best maintain the stability of therapeutic proteins in manufacturing and clinical settings. “We’re working on these next steps already,” he says. “Although, as yet, we don’t have an algorithm for this.”

Ventura spoke about the latest version of his algorithm at the Bioprocessing Summit Europe in March.

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Faster Process Development via “Transfer Learning”

An emerging artificial intelligence technique called “transfer learning” could help drug makers use data to speed up the development of biopharmaceutical manufacturing processes, according to new analysis.

In transfer learning, predictive models that have been trained on historical data are used to improve the performance of a task.

Unlike machine learning (ML)—where the training process begins from scratch—transfer learning applies existing knowledge to new but related problems, reducing the amount of data and time required to build the model.

Researchers at the Karlsruhe Institute of Technology in Germany, who looked at the approach, identified several potential biopharma applications, according to lead author Daniel Barón Díaz, citing reactor modeling as an example.

“Transfer learning models can be used to predict critical outcomes like viable cell density (VCD) and product titre from online sensor data—for example, pH, temperature, gas flow—from historical data from a different, but related process.”

The approach can also optimize process monitoring. Díaz tells GEN that, “Transfer learning-enhanced soft sensors can be established to monitor protein concentrations in real-time by leveraging existing models from related fermentations.”

Data limitation

When compared with other model-building techniques, transfer learning offers potential cost and time savings, according to Díaz, who cites a reduced experimentation burden as an example.

“Conventional machine learning requires large, structured datasets that are often unavailable in biopharma due to the high cost and labor-intensive nature of experiments. Transfer learning allows companies to leverage historical data and existing models to build reliable predictors for new processes with very limited data.

“By reusing prior knowledge, transfer learning can significantly decrease the number of experiments required—sometimes needing only one to three batches to achieve robust simulations,” he says.

However, the ultimate benefit is that transfer learning speeds up process model development, according to Díaz, who adds, “It can make model adaptation faster than retraining from scratch, facilitating quicker process design and digital twin deployment.”

Challenges

So, transfer learning has the potential to create predictive models for manufacturing development. However, the key caveat is that the processes involved must be sufficiently similar for it to be effective, Díaz says.

“For transfer learning to be effective, the source and target domains must be meaningfully related. If the processes are too different, the assumptions and learned representations may not align, leading to negative transfer, where the transferred knowledge actually degrades the model’s performance.

“Data sets obtained at different scales or under varying conditions are often inconsistent, which can hinder the successful transfer of knowledge. Fine-tuning complex neural network architectures on very small target datasets can lead to overfitting, where the model fails to generalize to new data,” he says.

To address this, manufacturers will need to establish metrics to determine similarity, Díaz explains.

“There are currently no standardized metrics for measuring domain similarity in bioprocessing, nor are there comprehensive benchmark datasets to easily compare different transfer learning techniques.”

Another challenge is the current lack of AI expertise in the industry, Díaz says.

“There is often a disciplinary knowledge gap between process engineers and data scientists, and ML models without a mechanistic backbone may be perceived as opaque black boxes, hindering trust and industrial adoption,” he tells GEN.

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