Iran rial hits record low around 150,000 against dollar
The dollar was being offered for 150,000 rials, compared with about 138,000 rials on Tuesday
The rial has lost more than two-thirds of its value this year, partly due to strong demand for dollars among Iranians
Updated 05 September 2018
Arab News
JEDDAH: The Iranian rial has fallen to its lowest rate on record, with the currency now trading at over 150,000 to the US dollar. It recouped most of its losses on Wednesday on the unofficial market, with the economy facing pressure from the reimposition of US sanctions.
The dollar was being offered at 140,000 rials, compared to the record low of 150,000 rials earlier on Wednesday. The website bazar360.com quoted 139,000. Mesghal.online gave an exchange rate of 141,940. The currency had traded at about 138,000 rials on Tuesday, compared to approximately 128,000 on Monday.
Meanwhile, Iran is forgoing plans for now to transfer about €300 million ($347 million) in funds held in Germany to Iran after strong opposition from the US, two sources with knowledge of the matter said on Wednesday.
The funds are held at the Hamburg-based Europaeisch-Iranische Handelsbank (eihbank).
The US ambassador to Germany had been urging Berlin to stop Iran withdrawing large sums of cash from bank accounts in Germany to offset the effect of new US sanctions imposed after Washington withdrew from a 2015 nuclear deal.
“Iran is the world’s leading state sponsor of terrorism. We must be vigilant,” Ambassador Richard Grenell said on Twitter on Wednesday in reaction to news that Iran was dropping its bid to move the money.
The development was earlier reported by the German daily Sueddeutsche Zeitung and the broadcasters NDR and WDR.
Experts reveal how AI is reducing burnout and streamlining workflows
Updated 11 sec ago
Nada Hameed
JEDDAH: Artificial intelligence is increasingly moving from the margins of healthcare innovation into its operational core. Rather than replacing clinicians, AI is being deployed to address persistent challenges across health systems, from administrative overload and staff burnout to fragmented data and inefficient patient flow.
Speaking to Arab News, Abbes Seqqat, chief executive officer of Rain Stella Technologies, and Eric Turkington, chief product officer, discussed how AI is already transforming healthcare delivery — and why its impact is most meaningful when embedded directly into clinical workflows rather than treated as a standalone tool.
Seqqat describes AI’s role as accelerating a structural shift in healthcare delivery. “AI is accelerating the shift in healthcare from reactive to proactive care, because AI fundamentally helps detect, analyze and predict,” he said, noting that many health systems lack the resources to perform these tasks at scale.
While AI use cases in healthcare are broad, Seqqat emphasized that the most effective applications today focus on operational and clinical fundamentals, including reducing administrative burden, identifying patient risks earlier, and capturing clinical data more reliably and in real time.
RST’s portfolio reflects this approach, spanning surgical data capture and workflow automation, cloud-based electronic medical records, and health information exchange. Across these systems, the common goal is improving data quality and usability so clinicians can spend less time managing information and more time delivering care.
According to Turkington, RST’s systems rely on a mix of established and emerging AI technologies.
RST's Equinox offers a streamlined workflow, minimizing redundant data entry, and also allows for seamless integration with other systems. (RST images)
“Across the portfolio, we are using a wide range of AI and predictive technologies, from voice technology to reliably capture clinician inputs, to large language models that analyze and act on collected data,” he said.
A key focus has been adapting AI to regional and clinical realities. Voice models, for example, have been trained on UAE and GCC accents and grounded in medical terminology to improve accuracy in real-world settings. RST also uses retrieval-augmented generation and multi-agent AI architectures, allowing different AI components to perform specialized tasks such as classifying surgical notes, identifying unusual events, or assisting with billing and coding, Turkington explained.
DID YOU KNOW?
• AI can detect, analyze, and predict patient risks faster than traditional methods.
• Systems like Equinox use voice input and predictive analytics to actively support clinical decisions.
• AI assistants provide real-time updates, automate documentation, and improve coordination in operating theaters.
One of the central concerns around AI adoption is whether it adds complexity to already demanding clinical roles. Seqqat argues the opposite should be the goal.
“For nurses and frontline staff, AI’s greatest contribution is removing the invisible administrative friction that leads to burnout,” Seqqat said.
In operating theaters, AI systems can replace manual coordination methods such as phone calls and whiteboards by providing real-time situational awareness. By automating updates, anticipating delays, and serving as an on-demand clinical notepad, AI reduces cognitive load and allows staff to remain focused on patient care, he explained.
RST’s voice-enabled assistant, Orva, is designed specifically for perioperative environments.
Orva captures live updates through voice input, enabling it to surface delays, flag bottlenecks, and prompt coordination between departments. (RST photo)
Turkington said it enables hands-free documentation and coordination, helping surgical teams manage schedules and resources more effectively.
By capturing live updates through voice input, Orva can surface delays, flag bottlenecks, and prompt coordination between departments. It also assists with documentation and coding, reducing errors and supporting more accurate reimbursement— an area where incomplete records often create downstream challenges.
Electronic medical records remain central to healthcare delivery, but Turkington noted that AI can move them beyond passive data repositories.
Eric Turkington, chief product officer of Rain Stella Technologies. (RST photo)
“We designed Equinox as an EMR that enables you to spend less time with the software and more time with patients,” Turkington said.
Through voice input, automated documentation from visual annotations, and AI-generated pre-visit summaries, the system can actively support clinicians rather than slow them down. Predictive analytics, such as identifying no-show risks or highlighting care gaps, further shift EMRs toward decision-support tools rather than administrative obligations.
Both executives stressed that AI’s effectiveness depends heavily on data access and quality. Seqqat pointed to interoperability as a prerequisite rather than an afterthought.
“AI is only as powerful as the data it can access,” he said, adding that fragmented records limit both clinical insight and system-wide learning.
Health information exchanges, such as RST’s Constellation platform, enable patient data to be viewed longitudinally across providers. AI can then assist with patient identity matching and population-level analysis, allowing trends and risks to be identified across large datasets.
Turkington shared an example from an operating theatre where AI helped prevent cascading delays. When a surgical case ran late, a nurse verbally updated Orva that the patient was ready to exit. The system alerted the recovery unit, analyzed schedule conflicts, and prompted management to reassign staff before delays affected subsequent procedures.
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By tagging the cause of the delay and feeding that data into predictive models, the system helped prevent similar issues in the future — without additional manual coordination.
According to Seqqat, the primary returns from AI adoption come from combining efficiency with financial accuracy. Streamlined workflows allow providers to treat more patients without compromising care, while improved documentation reduces revenue leakage.
Looking ahead, Seqqat sees AI becoming central to Saudi Arabia’s healthcare transformation. He described its role as advancing smart hospitals, predictive patient flow, and precision medicine aligned with Vision 2030 goals.
“The role of AI in Saudi Arabia’s healthcare sector is evolving from a supporting technology to a foundational pillar of the Kingdom’s Vision 2030 transformation. Over the next few years, we expect to see AI move into the realm of smart hospitals, where predictive analytics optimize patient flow and AI-driven precision medicine leverages the Saudi Genome Program to provide hyper-personalized care. By unifying national health data and automating complex administrative workflows, AI will enable a more proactive, value-based healthcare model that improves patient outcomes and operational efficiency across the country.”