diff --git a/content/authors/Ben-Hatch/.DS_Store b/content/authors/Ben-Hatch/.DS_Store new file mode 100644 index 000000000..5008ddfcf Binary files /dev/null and b/content/authors/Ben-Hatch/.DS_Store differ diff --git a/content/authors/Chris-Myers/.DS_Store b/content/authors/Chris-Myers/.DS_Store new file mode 100644 index 000000000..adcc24d63 Binary files /dev/null and b/content/authors/Chris-Myers/.DS_Store differ diff --git a/content/authors/Lukas-Buecherl/.DS_Store b/content/authors/Lukas-Buecherl/.DS_Store new file mode 100644 index 000000000..9b87f7e71 Binary files /dev/null and b/content/authors/Lukas-Buecherl/.DS_Store differ diff --git a/content/authors/Lukas-Buecherl/_index.md b/content/authors/Lukas-Buecherl/_index.md index b8119a8bd..9e4323ad4 100644 --- a/content/authors/Lukas-Buecherl/_index.md +++ b/content/authors/Lukas-Buecherl/_index.md @@ -1,6 +1,6 @@ --- # Display name -title: Lukas Bücherl +title: Lukas Buecherl # Username (this should match the folder name) authors: @@ -92,10 +92,8 @@ display_groups: - FLUENT Project --- +In 2019, Lukas Buecherl received his Bachelor's degree in Electrical Engineering and Computer Science from the University of Ulm, Germany. He continued his studies at the University of Colorado Boulder, where he completed both his Master's and Ph.D. in Biomedical Engineering as part of the Interdisciplinary Quantitative Biology Program. This program emphasized interdisciplinary studies, which laid the foundation for his current research interests at the intersection of engineering and biology. -Lukas Bücherl joined the Genetic Logic Lab as Ph.D. student under the supervision of Dr. Chris Myers. He is a member of the IQ Biology program and his research focuses on synthetic biology and its possible applications in improving human lives. He is currently working in computational synthetic biology and plans to extend his knowledge with wet lab experience. +As an assistant professor in the Biological Engineering Department at Utah State University, Dr. Buecherl specializes in the analysis and improvement of genetic circuit design. His work leverages computational modeling and analysis techniques alongside experimental validation. Additionally, he explores the integration of electrical engineering and biology, focusing on laboratory automation and the development of microfluidic devices. -He was born and raised in Munich, Germany, and obtained a Bachelor of Science in electrical engineering from the University of Ulm, Germany, in 2019. -As a member of the International Student Advisory Board, Lukas focuses on improving new international students' transition to the American academic system. Based on personal experience, he also wants to work on the acceptance of foreign letters in the system, since the german umlaut in his last name often causes problems with his visa and identification. - -Lukas enjoys what Boulder has to offer by hiking, running at the Creek, and playing the guitar in his free time. +Dr. Buecherl is also an active member of the academic community, serving on the program committee for the International Workshop of Biodesign Automation. His contributions to the field have been recognized through several awards, including the Excellent Mentorship Award and the Outstanding Graduate Researcher Award from the Electrical and Computer Engineering Department at the University of Colorado Boulder. diff --git a/content/authors/Lukas-Buecherl/avatar.jpeg b/content/authors/Lukas-Buecherl/avatar.jpeg new file mode 100644 index 000000000..ac1f3fcca Binary files /dev/null and b/content/authors/Lukas-Buecherl/avatar.jpeg differ diff --git a/content/publication/buecherl-decoding-genetic-circuit-failures-2024/cite.bib b/content/publication/buecherl-decoding-genetic-circuit-failures-2024/cite.bib new file mode 100644 index 000000000..91bc72fdf --- /dev/null +++ b/content/publication/buecherl-decoding-genetic-circuit-failures-2024/cite.bib @@ -0,0 +1,12 @@ +@phdthesis{DecodingGeneticCircuitFailures_buecherl_2024, + abstract = {Synthetic biology resides at the nexus of engineering and biology, employing diverse ap- proaches to engineer biological systems. These systems can be as simple as DNA sequences, bio- chemical reactions, or more abstracted through control theory or digital logic, among other ways. Similar to other engineering disciplines, for real-world applications, the designed systems must ex- hibit robustness and adaptability to environmental changes beyond controlled laboratory settings. This dissertation focuses on genetic constructs viewed specifically as digital logic genetic circuits, examining their implementation and failure behavior. It aims to elucidate and analyze various failure modes and proposes analytical methods to enhance genetic circuit robustness. This work defines genetic circuit failure, where deviations from expected output are deemed as unexpected and faulty. Such deviations may stem from failures at the cellular level or from flaws in the circuit’s logic implementation or Boolean function. Subsequently, this dissertation develops computational methods to predict circuit behavior, employing diverse analysis techniques such as ordinary differ- ential equation analysis, stochastic simulation algorithms, and stochastic model verification. These methodologies enable the prediction of the likelihood of failure occurrence. Furthermore, this dis- sertation compares different computational modeling techniques to assess the effort required for genetic circuit analysis. Finally, experimental validation is provided for a predicted circuit failure, demonstrating the practical application of the proposed methodologies.}, + address = {Boulder, Colorado, USA}, + author = {Buecherl, Lukas}, + file = {}, + language = {en}, + month = {March}, + school = {University of Colorado Boulder}, + title = {Decoding Genetic Circuit Failures: Analyzing Static and Dynamic Failures in Genetic Circuitry}, + type = {Ph.D. Thesis}, + year = {2024} +} diff --git a/content/publication/buecherl-decoding-genetic-circuit-failures-2024/index.md b/content/publication/buecherl-decoding-genetic-circuit-failures-2024/index.md new file mode 100644 index 000000000..f8825c368 --- /dev/null +++ b/content/publication/buecherl-decoding-genetic-circuit-failures-2024/index.md @@ -0,0 +1,10 @@ +--- +title: "Decoding Genetic Circuit Failures: Analyzing Static and Dynamic Failures in Genetic Circuitry" +date: 2024-03-19 +publishDate: 2024 +authors: ["Lukas Buecherl"] +publication_types: ["7"] +abstract: "Synthetic biology resides at the nexus of engineering and biology, employing diverse ap- proaches to engineer biological systems. These systems can be as simple as DNA sequences, bio- chemical reactions, or more abstracted through control theory or digital logic, among other ways. Similar to other engineering disciplines, for real-world applications, the designed systems must ex- hibit robustness and adaptability to environmental changes beyond controlled laboratory settings. This dissertation focuses on genetic constructs viewed specifically as digital logic genetic circuits, examining their implementation and failure behavior. It aims to elucidate and analyze various failure modes and proposes analytical methods to enhance genetic circuit robustness. This work defines genetic circuit failure, where deviations from expected output are deemed as unexpected and faulty. Such deviations may stem from failures at the cellular level or from flaws in the circuit’s logic implementation or Boolean function. Subsequently, this dissertation develops computational methods to predict circuit behavior, employing diverse analysis techniques such as ordinary differ- ential equation analysis, stochastic simulation algorithms, and stochastic model verification. These methodologies enable the prediction of the likelihood of failure occurrence. Furthermore, this dis- sertation compares different computational modeling techniques to assess the effort required for genetic circuit analysis. Finally, experimental validation is provided for a predicted circuit failure, demonstrating the practical application of the proposed methodologies." +featured: false +publication: "" +---