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STAT+: Pharmalittle: We’re reading about hackers extorting Novo, an FDA about-face, and more
Good morning, everyone, and welcome to the middle of the week. Congratulations on making it this far, and remember there are only a few more days until the weekend arrives. So keep plugging away. After all, what are the alternatives? While you ponder the possibilities, we invite you to join us for a needed cup of stimulation. Our choice today is maple bourbon. A shot of salvation, if you will. Meanwhile, here is the latest menu of tidbits to help you on your way. We hope you conquer the world and have a wonderful day. And as always, please do stay in touch. …
A cyber extortion group claimed to have stolen more than a terabyte of data from Novo Nordisk and said it is exploring selling parts of the data after unsuccessfully demanding $25 million from the company, Reuters reports. FulcrumSec, a cyber extortion group that emerged in October 2025, said in a long message posted to its website that it spent more than two months in Novo Nordisk’s networks stealing data. It said that data included company source code, proprietary information on released and unreleased drugs, trial data, employee, doctor, and patient data, information related to company processing facilities, and internal AI model information.
The U.S. Food and Drug Administration reversed its opposition to a closely watched experimental treatment for Huntington’s disease, clearing a path for UniQure to file for marketing approval, STAT writes. The decision comes after a recent meeting with FDA officials during which the agency agreed that a three-year analysis of an early-stage study that showed a benefit for patients with Huntington’s was “acceptable” to support a marketing application. These are the same data that former FDA officials, most notably Commissioner Marty Makary and Vinay Prasad, the agency’s top regulator of cell and gene therapies, previously concluded were insufficient to support a marketing application.
Good morning, everyone, and welcome to the middle of the week. Congratulations on making it this far, and remember there are only a few more days until the weekend arrives. So keep plugging away. After all, what are the alternatives? While you ponder the possibilities, we invite you to join us for a needed cup of stimulation. Our choice today is maple bourbon. A shot of salvation, if you will. Meanwhile, here is the latest menu of tidbits to help you on your way. We hope you conquer the world and have a wonderful day. And as always, please do stay in touch. …
A cyber extortion group claimed to have stolen more than a terabyte of data from Novo Nordisk and said it is exploring selling parts of the data after unsuccessfully demanding $25 million from the company, Reuters reports. FulcrumSec, a cyber extortion group that emerged in October 2025, said in a long message posted to its website that it spent more than two months in Novo Nordisk’s networks stealing data. It said that data included company source code, proprietary information on released and unreleased drugs, trial data, employee, doctor, and patient data, information related to company processing facilities, and internal AI model information.
The U.S. Food and Drug Administration reversed its opposition to a closely watched experimental treatment for Huntington’s disease, clearing a path for UniQure to file for marketing approval, STAT writes. The decision comes after a recent meeting with FDA officials during which the agency agreed that a three-year analysis of an early-stage study that showed a benefit for patients with Huntington’s was “acceptable” to support a marketing application. These are the same data that former FDA officials, most notably Commissioner Marty Makary and Vinay Prasad, the agency’s top regulator of cell and gene therapies, previously concluded were insufficient to support a marketing application.
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UniQure to file gene therapy for approval, reflecting major shifts at FDA

The decision marks another regulatory U-turn following the exits of Marty Makary and Vinay Prasad, suggesting to some analysts that current FDA leadership may be more flexible in certain cases.

The decision marks another regulatory U-turn following the exits of Marty Makary and Vinay Prasad, suggesting to some analysts that current FDA leadership may be more flexible in certain cases.
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Analytics Map Purification Optimization Tradeoffs
Analytics Map Purification Optimization Tradeoffs
Speed or quality? When it comes to two-step chromatography purification, biopharmaceutical manufacturers want both, despite knowing, realistically, that each choice involves tradeoffs.
With purity, stability, toxicity, processing times, and costs hanging in the balance, the key optimization questions, therefore, are which purification efforts deliver the greatest return and how they can be combined to achieve the ultimate, optimal balance.
A small multinational team of researchers is among the first to address that question with an analytical model “to jointly manage speed-quality tradeoffs and stage-specific lead-time constraints in purification operations,” Yasemin Limon, PhD, assistant professor, Bilkent University, tells GEN. This method guides optimization decisions, helping biomanufacturers decide how aggressively to intervene at each purification step of a serial, two-step chromatographic purification process based upon the costs of the intervention and the time constraints of the purification steps.
The model, based on queueing network theory, captures what the authors call “practically relevant” tradeoffs, correlating intervention efforts, their effects on stability timeframes, and the probability of quality enhancement. It was developed by Limon and colleagues, Tugce Martagan, PhD, associate professor, Northeastern University, and Ananth Krishnamurthy, PhD, professor, Indian Institute of Management Bangalore.
“Understanding how much and at which stations interventions should be applied allows biomanufacturers to optimize system performance without compromising on manufacturing lead times,” the team reports. Thus, the risk of long wait times between steps that may cause product deterioration is reduced.
They divided purification optimization steps into two categories: Type I—those that improve batch quality without increasing purification processing time (such as selecting better resins or reagents)—and Type II—those that increase both batch purity and purification processing times (such as reducing flow rates).
For each category, they evaluated how each optimization affected stage-specific lead-time constraints and how those constraints varied between the two categories of interventions.
Choices are interrelated
“Optimal intervention efforts change with costs,” they acknowledge. Here are the key takeaways:
- Under-investing in upstream purification pushes purification downstream, where increasing the polishing time may risk product stability
- For Type I interventions, put maximum effort into the least expensive options until product stability becomes a constraint
- For Type II interventions, each decision affects both quality and processing times. Characterize process times at each chromatography step and document stability-based time windows to create a reference chart that can be used repeatedly
- Shortening the stability window for step two necessitates more aggressive purification at step one. Fresh time constraints—related to new molecular stability data, for example—should not be evaluated in isolation
- Create a reference map for the range of operating conditions typically encountered in your facilities, along with possible interventions, their costs, and stability-based time effects. Use this as a real-time reference on the manufacturing floor
“The optimal policy depends on costs, processing times, and lead-time constraints,” Limon says. “Decisions at the first and second chromatography steps are interdependent.” Map those effects early to guide decisions in real time.
She recommends turning the model into a decision map. “A manufacturer can estimate its own process parameters (batch arrival rates, processing times at each purification step, stability-based time limits, intervention costs, and the effect of each intervention on quality and processing time) and use the model to identify which intervention policy is optimal under those conditions.
“Distinguish carefully between interventions that improve quality without increasing processing time and interventions that improve quality but slow the process,” Limon continues. “The first type affects lead time mainly through congestion at the downstream step, while the second type directly affects processing time and can make stage-specific lead-time constraints restrictive. Therefore, firms should quantify how interventions change processing time, congestion, and feasibility with respect to stability-based time windows.”
The post Analytics Map Purification Optimization Tradeoffs appeared first on GEN – Genetic Engineering and Biotechnology News.
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Jazz strikes new chord with AbCellera in T cell engager pact that could top $2.4B
Jazz strikes new chord with AbCellera in T cell engager pact that could top $2.4B
Jazz Pharmaceuticals is diversifying its oncology strategy, orchestrating a new antibody deal with AbCellera that offers $56 million upfront, plus $792 million in biobucks for each of the three initial programs. Read More
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